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--- |
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license: mit |
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datasets: |
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- best2009 |
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- scb_mt_enth_2020 |
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- oscar |
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- wikipedia |
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language: |
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- th |
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widget: |
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- text: วัน ที่ _ 12 _ มีนาคม นี้ _ ฉัน จะ ไป <mask> วัดพระแก้ว _ ที่ กรุงเทพ |
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library_name: transformers |
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--- |
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# HoogBERTa |
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This repository includes the Thai pretrained language representation (HoogBERTa_base) and the fine-tuned model for multitask sequence labeling. |
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# Documentation |
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## Prerequisite |
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Since we use subword-nmt BPE encoding, input needs to be pre-tokenize using [BEST](https://huggingface.co/datasets/best2009) standard before inputting into HoogBERTa |
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``` |
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pip install attacut |
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``` |
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## Getting Start |
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To initialize the model from hub, use the following commands |
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```python |
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from transformers import AutoTokenizer, AutoModel |
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from attacut import tokenized |
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import torch |
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tokenizer = AutoTokenizer.from_pretrained("new5558/HoogBERTa") |
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model = AutoModel.from_pretrained("new5558/HoogBERTa") |
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``` |
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To annotate POS, NE, and clause boundary, use the following commands |
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``` |
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``` |
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To extract token features, based on the RoBERTa architecture, use the following commands |
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```python |
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model.eval() |
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sentence = "วันที่ 12 มีนาคมนี้ ฉันจะไปเที่ยววัดพระแก้ว ที่กรุงเทพ" |
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all_sent = [] |
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sentences = sentence.split(" ") |
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for sent in sentences: |
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all_sent.append(" ".join(tokenize(sent)).replace("_","[!und:]")) |
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sentence = " _ ".join(all_sent) |
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tokenized_text = tokenizer(sentence, return_tensors = 'pt') |
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token_ids = tokenized_text['input_ids'] |
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with torch.no_grad(): |
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features = model(**tokenized_text, output_hidden_states = True).hidden_states[-1] |
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``` |
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For batch processing, |
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```python |
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model.eval() |
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sentenceL = ["วันที่ 12 มีนาคมนี้","ฉันจะไปเที่ยววัดพระแก้ว ที่กรุงเทพ"] |
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inputList = [] |
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for sentX in sentenceL: |
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sentences = sentX.split(" ") |
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all_sent = [] |
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for sent in sentences: |
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all_sent.append(" ".join(tokenize(sent)).replace("_","[!und:]")) |
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sentence = " _ ".join(all_sent) |
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inputList.append(sentence) |
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tokenized_text = tokenizer(inputList, padding = True, return_tensors = 'pt') |
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token_ids = tokenized_text['input_ids'] |
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with torch.no_grad(): |
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features = model(**tokenized_text, output_hidden_states = True).hidden_states[-1] |
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``` |
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To use HoogBERTa as an embedding layer, use |
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```python |
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with torch.no_grad(): |
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features = model(token_ids, output_hidden_states = True).hidden_states[-1] # where token_ids is a tensor with type "long". |
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``` |
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## Conversion Code |
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If you are interested in how to convert Fairseq and subword-nmt Roberta into Huggingface hub here is my code used to do the conversion and test for parity match: |
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https://www.kaggle.com/norapatbuppodom/hoogberta-conversion |
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# Citation |
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Please cite as: |
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``` bibtex |
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@inproceedings{porkaew2021hoogberta, |
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title = {HoogBERTa: Multi-task Sequence Labeling using Thai Pretrained Language Representation}, |
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author = {Peerachet Porkaew, Prachya Boonkwan and Thepchai Supnithi}, |
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booktitle = {The Joint International Symposium on Artificial Intelligence and Natural Language Processing (iSAI-NLP 2021)}, |
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year = {2021}, |
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address={Online} |
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} |
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``` |
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Download full-text [PDF](https://drive.google.com/file/d/1hwdyIssR5U_knhPE2HJigrc0rlkqWeLF/view?usp=sharing) |
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Check out the code on [Github](https://github.com/lstnlp/HoogBERTa) |