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Produk perbankan BCA banyak memenangkan penghargaan
<product-general>Produk perbankan banyak memenangkan penghargaan</product-general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Mau menabung, mau simpan uang, atau pun menyimpan barang berharga lebih baik ke BCA
<product-general>Mau menabung , mau simpan uang , atau pun menyimpan barang berharga lebih baik</product-general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Produk BCA terkenal eksklusif tetapi mahal
<product-general>Produk eksklusif mahal</product-general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Memang semua produk BCA menarik hati
<product-general>produk menarik hati</product-general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Setelah melalui proses telepon yang panjang tutup sudah kartu kredit bca. Ribet
<product-kartu kredit>tutup kartu kredit Ribet</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Tutup kartu kredit BCA. Biaya tahunan sangat mahal
<product-kartu kredit>kartu kredit Biaya tahunan sangat mahal</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Baru kali ini gue menyesal tutup kartu kredit BCA. Karena pakai KK BCA sangat menguntungkan
<product-kartu kredit>KK sangat menguntungkan</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Proses tutup kartu kredit BCA & Mandiri berbulan-bulan tanpa hasil
<product-kartu kredit>tutup kartu kredit berbulan-bulan tanpa hasil</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
BCA memang susah buat menutup kartu kredit
<product-kartu kredit>susah menutup kartu kredit</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Kemarin sudah tutup kartu kredit BCA karena banyak penawaran dan promo enggak jelas
<product-kartu kredit>kartu kredit penawaran dan promo enggak jelas</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
tutup kartu kredit BCA=6 menit. cuma buat bikin laporan penutupan. 2 hari lagi disuruh konfirmasi lagi. payah.
<product-kartu kredit>tutup kartu kredit 6 menit bikin laporan penutupan 2 hari lagi disuruh konfirmasi lagi . payah</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
susah banget tutup kartu kredit @KartuKreditBCA @BankBCA @HaloBCA
<product-kartu kredit>susah banget tutup kartu kredit</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
bakal kartu kredit BCA aku tutup semuanya @KartuKreditBCA. mengecewakan
<product-kartu kredit>kartu kredit mengecewakan</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Sudah saatnya tutup kartu kredit BCA deh. Tagihan yang katanya bebas bea bulanan, kena tagih lagi.
<product-kartu kredit>kartu kredit bea bulanan kena tagih lagi</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Wah, banyak promo di credit card BCA
<product-kartu kredit>banyak promo credit card</product-kartu kredit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
BCA prioritas mengantrenya cepat banget
<service-prioritas>prioritas mengantrenya cepat banget</service-prioritas>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
mengantre bca cepat banget. ini yang namanya keunggulan nasabah prioritas
<service-prioritas>mengantre cepat banget nasabah prioritas</service-prioritas>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
huehue gila ya BCA prioritas mengantrenya lebih cepat selesai.
<service-prioritas>prioritas mengantrenya lebih cepat selesai</service-prioritas>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
bahagia sekali hari ini disapa sama seluruh karyawan BCA Pondok indah
<general>disapa sama seluruh karyawan</general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Hari ini BCA buka salah satu KCP di daerah Setiabudi. mantaplah
<general>buka salah satu KCP di daerah Setiabudi . mantaplah</general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
saya lihat pelayanan dari orang-orang di bca ini sangat memuaskan.
<service-general>pelayanan sangat memuaskan</service-general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
sampai kapan pun bagi saya BCA tetap yang pelayanannya nomor 1 dibanding bank-bank yang dimiliki negara
<service-general>pelayanannya nomor 1 dibanding bank-bank yang dimiliki negara</service-general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
nah saya lebih senang bisa melalui telepon dengan call center begini @BankBCA
<service-haloBCA>lebih senang telepon call center</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
kemarin call Center BCA sudah menjelaskan perihal itu kepada saya dengan sangat detail
<service-haloBCA>call Center sangat detail</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
call center BCA itu karyawannya bukan orang BCA langsung. makanya infonya enggak begitu lengkap
<service-haloBCA>call center karyawannya bukan orang BCA langsung infonya enggak begitu lengkap</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
sudah berhari-hari masalah yang saya laporkan via call center belum juga selesai @BankBCA
<service-haloBCA>sudah berhari-hari masalah yang saya laporkan via call center belum juga selesai</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
saya sudah beli pulsa 60 habis cuma gara-gara menelepon call center BCA
<service-haloBCA>pulsa 60 habis menelepon call center</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
saudara saya menelepon call center @halobca kemarin dan tiba-tiba teleponnya dimatikan. kan kesal
<service-haloBCA>call center halobca tiba-tiba teleponnya dimatikan . kan kesal</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
lebih tenang kalau sudah mengomong langsung sama call center BCA
<service-haloBCA>lebih tenang kalau sudah mengomong langsung call center</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
tidak ada yang perlu ditakutkan. bersama call center bca kendala segera terselesaikan
<service-haloBCA>tidak ada yang perlu ditakutkan call center kendala segera terselesaikan</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
entah kenapa bagi saya tadi call center BCA itu bicara dengan nada tinggi kepada saya
<service-haloBCA>call center bicara dengan nada tinggi</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
tidak banyak orang yang bisa jadi call center BCA. salut
<service-haloBCA>call center salut</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
hanya orang-orang sabar yang sanggup menjalani hidup menjadi call center @bankBCA
<service-haloBCA>hanya orang-orang sabar yang sanggup menjalani hidup menjadi call center</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
kenapa call center bca susah untuk dihubungi
<service-haloBCA>call center susah untuk dihubungi</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
saya menelepon call center BCA susah sekali
<service-haloBCA>menelepon call center susah sekali</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Call Center HaloBCA. Bening-Bening euy
<service-haloBCA>Call Center HaloBCA Bening-Bening euy</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Pelayanan agen call center, belajarlah dari BCA. Mereka punya pelayanan yang baik, sebanding dengan pulsa yang lo keluarkan buat telepon ke 150xxx
<service-haloBCA>call center pelayanan yang baik</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Urusan call center, sejauh ini yang paling menyenangkan sih BCA.
<service-haloBCA>call center paling menyenangkan</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
terima kasih @halobca, komplain saya direspons dengan cepat
<service-haloBCA>halobca komplain direspons dengan cepat</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
@halobca adminnya pada makan gaji buta dari tadi telepon tidak ada yang angkat
<service-haloBCA>halobca adminnya makan gaji buta telepon tidak ada yang angkat</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
@halobca mantap sekali tengah malam masih mau respons
<service-haloBCA>halobca mantap sekali tengah malam masih mau respons</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
@halobca sms saya dibalas cepat banget, keren adminnya
<service-haloBCA>halobca sms dibalas cepat banget keren adminnya</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
suara admin @halobca lembut-lembut, sabar pula menghadapi nasabah
<service-haloBCA>admin halobca lembut-lembut , sabar pula menghadapi nasabah</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
gue salut sama admin twitter bca, bisa menjelaskan dengan rinci kepada nasabah
<service-haloBCA>salut admin twitter bisa menjelaskan dengan rinci kepada nasabah</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
HaloBCA keren, penjelasannya pas mantap. Bangga saya jadi nasabag BCA
<service-haloBCA>HaloBCA keren penjelasannya pas mantap</service-haloBCA> <general>Bangga saya jadi nasabag</general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
mengadukan pemblokiran atm lewat @halobca sangat menyenangkan, terbantu banget sama adminnya
<service-haloBCA>mengadukan pemblokiran atm halobca sangat menyenangkan , terbantu banget sama adminnya</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
contoh bank bca, admin facebook-nya cepat banget kasih balasan komplain nasabah
<service-haloBCA>admin facebook-nya cepat banget kasih balasan komplain nasabah</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
ganti buku tabungan di CS BCA pulogadung lamanya bukan main
<service-cs>ganti buku tabungan CS lamanya bukan main</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
pelayanan CS BCA semakin hari semakin baik
<service-cs>pelayanan CS semakin hari semakin baik</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
jadi cepat semua urusan saya karena CS BCA cepat kerjanya
<service-cs>CS cepat kerjanya</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
CS BCA bekasi bagus, detail sekali menjelaskan produknya
<service-cs>CS bagus , detail sekali menjelaskan produknya</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
mau buka tabungan baru jadi sangat mudah dibantu sama CS yang keren @BCA
<service-cs>buka tabungan baru sangat mudah CS keren</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Dan CS BCA lama sekali kerjanya, mengurus ATM hilang saja tidak becus
<service-cs>CS lama sekali kerjanya mengurus ATM hilang tidak becus</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Bingung mau mengurus ATM hilang, CS Wisma BCA BSD payah!
<service-cs>Bingung mengurus ATM hilang CS payah</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
bank bca depan duta mall payah banget sih customer service-nya
<service-cs>payah banget customer service-nya</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Pelayanan CS di BCA cabang deket PGB Bogor lambat bange
<service-cs>Pelayanan CS lambat bange</service-cs> <facility-aplikasi>BCA cabang deket PGB Bogor</facility-aplikasi>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Penyelesaian masalah atm saya jadi malah tambah rumit sama customer service BCA bandung
<service-cs>Penyelesaian masalah atm tambah rumit customer service</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Pelayanan CS BCA Pondok ungu buruk, seperti tidak niat menangani nasabah
<service-cs>Pelayanan CS buruk</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
CS BCA benar-benar payah pelayanannya
<service-cs>CS benar-benar payah pelayanannya</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Saya ganti paspor BCA yang sudah berumur 11 tahun dilayani dengan baik sama CS BCA Fatmawati
<service-cs>ganti paspor dilayani dengan baik CS</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
BCA punya customer service yang hebat banget, sabar menghadapi nasabah yang rewel
<service-cs>customer service hebat banget , sabar menghadapi nasabah yang rewel</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
tidak sampai 10 menit untuk ganti atm rusak. CS BCA memang cepat
<service-cs>tidak sampai 10 menit ganti atm rusak CS memang cepat</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
BCA cabang Kalimalang bagus banget pelayanannya. ganti kartu ATM dibantu CS yang sabar
<service-kantor cabang>BCA cabang Kalimalang bagus banget pelayanannya</service-kantor cabang> <service-cs>ganti kartu ATM dibantu CS yang sabar</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Pelayanan CS BCA Brawijaya Malang bagus.
<service-cs>Pelayanan CS bagus</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Sejauh ini CS yang responsif dan pelayanannya bagus cuma cs BCA.
<service-cs>CS responsif pelayanannya bagus</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
BCA semakin bagus. CS sangat membantu.
<general>semakin bagus</general> <service-cs>CS sangat membantu</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Cs bca kuta ini pelayanannya sangat bagus dan memuaskan nasabah, santun, dan lemah lembut
<service-cs>Cs pelayanannya sangat bagus dan memuaskan nasabah , santun , dan lemah lembut</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
KeyBCA aku sudah wasalam enggak pernah karena ribet .Paling benar ya m - BCA .
<facility-keybca>KeyBCA ribet</facility-keybca> <facility-m-bca>Paling benar m - BCA</facility-m-bca>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
duh ribet banget mau daftar m - bca - _ -
<facility-m-bca>ribet banget daftar m - bca</facility-m-bca>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
susah banget menambahkan daftar transfer di m - bca , mana kena sms berkali-kali tiap mengulang .enggak praktis .Saya ada m - banking lain tetapi enggak ribet kayak begitu
<facility-m-bca>susah banget menambahkan daftar transfer m - bca enggak praktis</facility-m-bca>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
lama memang , tahu begitu kagak gue mencopot nih m - bca , gara-gara admin @HaloBCA yoga sama dila jadi ribet lagi urusan nya
<service-haloBCA>admin HaloBCA jadi ribet lagi urusan nya</service-haloBCA>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Telkomsel Ribet buat m - BCA .harus ke Grapari dahulu lah !Balik ke ATM lah .Balik lagi ke Bank lah .sialan
<facility-m-bca>Ribet buat m - BCA</facility-m-bca>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
BCA & Mandiri masing-masing pakai Token .Rumit .Sering eror .Apalagi dipakai di luar Indonesia
<facility-keybca>pakai Token Rumit . Sering eror</facility-keybca> <facility-aplikasi>pakai Token Rumit . Sering eror</facility-aplikasi>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Dapat duit triliunan dari nasabah tetapi mengapa begitu rumit dan proses nya berbelit-belit @bca @bcafinance
<general>rumit dan proses nya berbelit-belit</general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Keren juga ya , bisa tarik tunai di ATM tanpa ATM - nya .kerja bagus , BCA !
<facility-atm>Keren tarik tunai di ATM tanpa ATM</facility-atm> <general>kerja bagus</general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Bank Mandiri Layanan makin cepat Transaksi makin simpel dan cepat
<service-general>Layanan makin cepat Transaksi makin simpel dan cepat</service-general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Gue baru tahu kalau atm BCA bisa ganti kartu secara langsung di CS Digital .keren ya enggak usah ke konter CS lagi
<facility-mesin cs digital>bisa ganti kartu CS Digital keren</facility-mesin cs digital>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
toko daring juga kebanyakan pakai BCA .Bisa tarik tunai tanpa kartu atm juga kalau lupa bawa dompet .Paling keren dan nyaman menurut ku
<general>toko daring juga kebanyakan pakai</general> <facility-atm>Bisa tarik tunai tanpa kartu atm Paling keren dan nyaman</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
aku suka Bank BCA .kartu atm - nya keren .
<general>aku suka</general> <product-kartu debit>kartu atm keren</product-kartu debit>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Tadi mencobai transaksi tanpa kartu di atm bca pertama kali .kok keren ya .kampung hehe .
<facility-atm>transaksi tanpa kartu atm keren</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Customer Service BCA Ujung Berung keren banget uy .mengurusi kartu ATM yang tertelan cepat banget .Kurang dari 10 menit
<service-cs>Customer Service keren banget mengurusi kartu ATM yang tertelan cepat banget</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
BCA keren sekarang sudah punya mesin Atm setor tunai dan bisa tarik tunai juga
<general>keren</general> <facility-atm>sudah punya Atm setor tunai bisa tarik tunai</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
ATM Bank BJB ini keren banget .Sekarang sudah bisa dipakai sama nasabah BCA .
<facility-atm>ATM keren banget . Sekarang sudah bisa dipakai sama nasabah BCA</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Sore ini ke BCA Sudirman , dan ternyata ATM di BCA tersebut makin bagus .ATM setoran tunai dan tarikan dalam satu mesin .Keren !
<facility-atm>ATM makin bagus ATM setoran tunai dan tarikan dalam satu mesin . Keren</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Keren banget ini mesin atm BCA , dana nya terpotong tetapi uang nya enggak keluar !sialan
<facility-atm>atm dana nya terpotong tetapi uang nya enggak keluar ! sialan</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Baru sadar ternyata di atm bca ada fitur untuk beli reksadana .keren ya
<facility-atm>atm ada fitur untuk beli reksadana keren</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Bukan promosi , ya .Tetapi BCA memang keren kalau soal blokir dan ganti ATM yang hilang itu .Cepat , dan bikin lega .: D
<service-cs>keren blokir dan ganti ATM yang hilang Cepat , dan bikin lega</service-cs>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Mesin atm bca keren .Secara tampilan dan ada tenda nya
<facility-atm>atm keren</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Satpam ATM BCA Dayeuhkolot keren , suara nya mirip yang nyanyi butiran debu
<service-general>Satpam keren</service-general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Bca , banyak yang pakai , transaksi gampang , cari atm enggak susah
<general>banyak yang pakai</general> <service-general>transaksi gampang</service-general> <facility-atm>atm enggak susah</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Kalau BCA , biaya bulanan nya tekor cuy .
<product-simpanan>biaya bulanan tekor</product-simpanan>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
BCA lebih banyak ATM - nya semua transaksi pakai m - banking lebih praktis :)
<facility-atm>lebih banyak ATM</facility-atm> <facility-m-bca>transaksi m - banking lebih praktis</facility-m-bca>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
klikbca memang begitu kadang kalau sudah malam suka tertunda .apalagi kalau beda atm , biasanya pagi baru masuk
<facility-klikbca>klikbca kalau sudah malam suka tertunda . apalagi kalau beda atm</facility-klikbca>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
sudah 2 atm enggak bisa dipakai kata nya gangguan sinyal
<facility-atm>atm enggak bisa dipakai kata nya gangguan sinyal</facility-atm>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
jujur saja sebelumnya saya lebih mengunggulkan e - channel BCA .ternyata sekarang mandiri lebih simpel dan mudah digunakan .
<facility-e-channel>e - channel lebih simpel dan mudah digunakan</facility-e-channel> <facility-aplikasi>lebih simpel dan mudah digunakan</facility-aplikasi>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Parah nih @BNI masa transaksi gagal tetapi tetap dikenakan biaya admin ?Aturan nya kacau nih @ojkindonesia
<facility-e-channel>transaksi gagal tetapi tetap dikenakan biaya admin</facility-e-channel> <general>kacau</general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Kacau banget nih bank @BNI kantor kas Maharaja Depok .Teller cuma 1 , eh masih latihan pula .
<general>Kacau banget</general> <service-teller>Teller cuma 1 , eh masih latihan pula</service-teller>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Wah kacau nih internet banking @BNI Daritadi begini melulu .Gara-gara koneksi putus pas lagi masuk .Sistem nya payah .
<facility-aplikasi>kacau internet banking koneksi putus pas lagi masuk Sistem payah</facility-aplikasi>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Internet banking punya Mandiri , BNI , BCA , kacau semua .Cuma CIMB yang normal diakses jam sebegini : |
<facility-aplikasi>Internet banking kacau semua normal diakses jam sebegini</facility-aplikasi> <facility-klikbca>Internet banking kacau semua</facility-klikbca>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output:
Persetan buat Bank Negara Indonesia ( BNI ) yang enggak becus bikin mesin ATM .KACAU-KACAU BNI 46 TAHI !
<facility-atm>enggak becus mesin ATM</facility-atm> <general>KACAU-KACAU TAHI</general>
Task: Extract aspects and corresponding text from the input sentence. Use the provided list of aspects to categorize the extracted text. Input format: A sentence or short paragraph in Indonesian. Output format: XML-style tags containing the aspect and corresponding text. Aspect list: facility-BCA Mobile facility-EDC facility-NFC facility-aplikasi facility-atm facility-deposit box facility-e-channel facility-general facility-kantor facility-keybca facility-klikbca facility-klikpay facility-m-bca facility-mesin cs digital facility-payroll facility-phone banking general general-iklan general-promo product-KKB product-KMK product-KPR product-KUR product-asuransi product-deposito product-e-money product-flazz product-general product-giro product-kartu debit product-kartu kredit product-kartu-kredit product-pinjaman product-sakuku product-simpanan service-cs service-customer center service-general service-haloBCA service-kantor cabang service-karyawan service-prioritas service-satpam service-telemarketing service-teller service-tukang parkir Rules for extraction: 1. Identify the most relevant aspect(s) from the list for the given input. 2. Extract the minimal span of text that accurately represents the aspect. 3. If multiple aspects are present, extract each one separately. 4. If no relevant aspect is found, output "NONE" Examples: Input: BNI enggak menyediakan jalur teller khusus kliring giro / cek. Padahal kliring giro / cek ada batas waktu nya. Payah! Output: <service-teller>enggak menyediakan jalur teller khusus kliring giro / cek</service-teller> <general>Payah</general> Input: Teller Mandiri yang baru ini ribet sekali. Output: <service-teller>Teller ribet sekali</service-teller> Input: mau verifikasi kartu kredit saja susah ya, danamon danamon. sudah bagus dipakai lo ini dipersulit. mau nya apa T.T Output: <product-kartu kredit>verifikasi kartu kredit susah</product-kartu kredit> Input: Saya sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari. Output: <facility-BCA Mobile>sangat puas dengan layanan BCA Mobile, sangat memudahkan transaksi sehari-hari</facility-BCA Mobile> Input: Bank ini tidak memiliki fasilitas apa-apa yang berguna. Output: <general>tidak memiliki fasilitas apa-apa yang berguna</general> Input: Siang ini , baik mobile BCA enggak bisa digunakan @HaloBCA internet banking juga lelet . Output: <facility-BCA Mobile>mobile BCA enggak bisa digunakan</facility-BCA Mobile> <facility-klikbca>internet banking lelet</facility-klikbca> Input: Iya sih , aplikasi mobile - nya Mandiri lebih bagus dari BCA . Output: <facility-aplikasi>aplikasi mobile lebih bagus dari</facility-aplikasi> <facility-BCA Mobile>lebih bagus</facility-BCA Mobile> Input: Cuaca hari ini cerah sekali. Output: NONE Handling ambiguity: - If a sentence could belong to multiple aspects, write all of them Now, given the input text below, extract the relevant aspects and text: Input: [text] Output: