--- dataset_info: - config_name: all_codes features: - name: url dtype: string - name: state dtype: string - name: path dtype: string - name: title dtype: string - name: content dtype: string splits: - name: train num_bytes: 4098779991 num_examples: 1844116 download_size: 1401775509 dataset_size: 4098779991 - config_name: all_regs features: - name: url dtype: string - name: state dtype: string - name: path dtype: string - name: title dtype: string - name: content dtype: string splits: - name: train num_bytes: 3199856796 num_examples: 2208863 download_size: 718784236 dataset_size: 3199856796 - config_name: codes features: - name: url dtype: string - name: state dtype: string - name: path dtype: string - name: title dtype: string - name: content dtype: string splits: - name: AL num_bytes: 43731588 num_examples: 22200 - name: AK num_bytes: 32184571 num_examples: 17779 - name: AZ num_bytes: 56665824 num_examples: 24623 - name: AR num_bytes: 88392840 num_examples: 38121 - name: CA num_bytes: 290455932 num_examples: 158333 - name: CO num_bytes: 124828839 num_examples: 36191 - name: CT num_bytes: 90023924 num_examples: 27290 - name: DE num_bytes: 48197245 num_examples: 20855 - name: FL num_bytes: 85789801 num_examples: 24560 - name: GA num_bytes: 74831320 num_examples: 29282 - name: HI num_bytes: 46836244 num_examples: 22022 - name: ID num_bytes: 47178706 num_examples: 22712 - name: IL num_bytes: 118398324 num_examples: 4745 - name: IN num_bytes: 110050649 num_examples: 80902 - name: IA num_bytes: 61048195 num_examples: 40965 - name: KS num_bytes: 65423047 num_examples: 28869 - name: LA num_bytes: 102840709 num_examples: 51205 - name: ME num_bytes: 87323065 num_examples: 45542 - name: MD num_bytes: 76998733 num_examples: 38070 - name: MA num_bytes: 60263360 num_examples: 24385 - name: MI num_bytes: 115910375 num_examples: 45274 - name: MN num_bytes: 85378645 num_examples: 27391 - name: MS num_bytes: 72048841 num_examples: 30070 - name: MO num_bytes: 75588171 num_examples: 29948 - name: MT num_bytes: 69870385 num_examples: 44042 - name: NE num_bytes: 70590689 num_examples: 39587 - name: NV num_bytes: 79466582 num_examples: 48720 - name: NH num_bytes: 51559565 num_examples: 29035 - name: NJ num_bytes: 103603084 num_examples: 55270 - name: NM num_bytes: 86303928 num_examples: 31146 - name: NY num_bytes: 144693313 num_examples: 38636 - name: NC num_bytes: 70874230 num_examples: 29172 - name: ND num_bytes: 977500 num_examples: 2499 - name: OH num_bytes: 93420849 num_examples: 33306 - name: OK num_bytes: 72415016 num_examples: 32299 - name: OR num_bytes: 87859395 num_examples: 47446 - name: PA num_bytes: 36036513 num_examples: 14464 - name: RI num_bytes: 65282284 num_examples: 34035 - name: SC num_bytes: 62871267 num_examples: 30972 - name: SD num_bytes: 15545185 num_examples: 11406 - name: TN num_bytes: 24195712 num_examples: 11140 - name: TX num_bytes: 212279038 num_examples: 122031 - name: UT num_bytes: 26657635 num_examples: 10969 - name: VT num_bytes: 23384551 num_examples: 11075 - name: VA num_bytes: 21372134 num_examples: 10698 - name: WA num_bytes: 23574520 num_examples: 11182 - name: WV num_bytes: 27748050 num_examples: 10928 - name: WI num_bytes: 46634714 num_examples: 11288 - name: WY num_bytes: 21276332 num_examples: 10658 - name: DC num_bytes: 69524738 num_examples: 23687 - name: PR num_bytes: 61028048 num_examples: 28118 download_size: 1270324283 dataset_size: 3729434205 - config_name: default features: - name: url dtype: string - name: state dtype: string - name: path dtype: string - name: title dtype: string - name: content dtype: string splits: - name: codes num_bytes: 3729434205 num_examples: 1675143 download_size: 1269141079 dataset_size: 3729434205 - config_name: ui_codes features: - name: url dtype: string - name: state dtype: string - name: path dtype: string - name: title dtype: string - name: content dtype: string splits: - name: train num_bytes: 24646719 num_examples: 8261 download_size: 8814028 dataset_size: 24646719 - config_name: ui_qa features: - name: idx dtype: int64 - name: table_id dtype: string - name: column_num dtype: int64 - name: jurisdiction dtype: string - name: jur_abb dtype: string - name: question_context dtype: string - name: question dtype: string - name: answer dtype: string splits: - name: train num_bytes: 6987039 num_examples: 3400 download_size: 214970 dataset_size: 6987039 - config_name: ui_qas features: - name: idx dtype: int64 - name: table_id dtype: string - name: column_num dtype: int64 - name: column_name dtype: string - name: column_dtype dtype: string - name: jurisdiction dtype: string - name: jur_abb dtype: string - name: question_context dtype: string - name: question dtype: string - name: answer dtype: string splits: - name: train num_bytes: 7451560 num_examples: 3700 download_size: 218717 dataset_size: 7451560 - config_name: ui_qas_bool_supp features: - name: index dtype: int64 - name: idx dtype: int64 - name: table_id dtype: string - name: column_num dtype: int64 - name: column_name dtype: string - name: column_dtype dtype: string - name: jurisdiction dtype: string - name: jur_abb dtype: string - name: question_context dtype: string - name: question dtype: string - name: answer dtype: bool splits: - name: train num_bytes: 6442222 num_examples: 3015 download_size: 178156 dataset_size: 6442222 - config_name: ui_regs features: - name: url dtype: string - name: state dtype: string - name: path dtype: string - name: title dtype: string - name: content dtype: string splits: - name: train num_bytes: 8893603 num_examples: 5639 download_size: 2687386 dataset_size: 8893603 - config_name: ui_tables features: - name: table_id dtype: string - name: table_name dtype: string - name: table_description dtype: string - name: notes dtype: string - name: table_data dtype: string - name: chapter dtype: int64 - name: headers dtype: string - name: prompt_context dtype: string - name: prompts sequence: string - name: abbs dtype: string splits: - name: train num_bytes: 853904 num_examples: 83 download_size: 218612 dataset_size: 853904 configs: - config_name: all_codes data_files: - split: train path: all_codes/train-* - config_name: all_regs data_files: - split: train path: all_regs/train-* - config_name: codes data_files: - split: AL path: codes/AL-* - split: AK path: codes/AK-* - split: AZ path: codes/AZ-* - split: AR path: codes/AR-* - split: CA path: codes/CA-* - split: CO path: codes/CO-* - split: CT path: codes/CT-* - split: DE path: codes/DE-* - split: FL path: codes/FL-* - split: GA path: codes/GA-* - split: HI path: codes/HI-* - split: ID path: codes/ID-* - split: IL path: codes/IL-* - split: IN path: codes/IN-* - split: IA path: codes/IA-* - split: KS path: codes/KS-* - split: LA path: codes/LA-* - split: ME path: codes/ME-* - split: MD path: codes/MD-* - split: MA path: codes/MA-* - split: MI path: codes/MI-* - split: MN path: codes/MN-* - split: MS path: codes/MS-* - split: MO path: codes/MO-* - split: MT path: codes/MT-* - split: NE path: codes/NE-* - split: NV path: codes/NV-* - split: NH path: codes/NH-* - split: NJ path: codes/NJ-* - split: NM path: codes/NM-* - split: NY path: codes/NY-* - split: NC path: codes/NC-* - split: ND path: codes/ND-* - split: OH path: codes/OH-* - split: OK path: codes/OK-* - split: OR path: codes/OR-* - split: PA path: codes/PA-* - split: RI path: codes/RI-* - split: SC path: codes/SC-* - split: SD path: codes/SD-* - split: TN path: codes/TN-* - split: TX path: codes/TX-* - split: UT path: codes/UT-* - split: VT path: codes/VT-* - split: VA path: codes/VA-* - split: WA path: codes/WA-* - split: WV path: codes/WV-* - split: WI path: codes/WI-* - split: WY path: codes/WY-* - split: DC path: codes/DC-* - split: PR path: codes/PR-* - config_name: default data_files: - split: codes path: data/codes-* - config_name: ui_codes data_files: - split: train path: ui_codes/train-* - config_name: ui_qa data_files: - split: train path: ui_qa/train-* - config_name: ui_qas data_files: - split: train path: ui_qas/train-* - config_name: ui_qas_bool_supp data_files: - split: train path: ui_qas_bool_supp/train-* - config_name: ui_regs data_files: - split: train path: ui_regs/train-* - config_name: ui_tables data_files: - split: train path: ui_tables/train-* --- # UI_Survey The `ui_survey` dataset is a collection of datasets derived from unemployment insurance state survey. Specifically, it is derived from the Department of Labor's (DoL) [Comparison of State Unemployment Insurance Laws](https://oui.doleta.gov/unemploy/pdf/uilawcompar/2023/complete.pdf) which they publish annually. (This dataset is based off of the 2023 survey.) The dataset was designed for the benchmarking of both LLMs' retrieval and statutory reasoning ability. The first dataset is `ui_tables` which aims to store the information from the DoL's survey. `ui_tables` contains _82 rows_ corresponding roughly to the . ## Dataset Structure ```python >>> load_dataset('reglab/ui_survey', 'ui_tables') Dataset({ features: ['table_id', 'table_name', 'table_description', 'notes', 'table_data', 'chapter', 'headers', 'prompt_context', 'prompts'], num_rows: 82 }) >>> load_dataset('reglab/ui_survey', 'ui_qas') Dataset({ features: ['idx', 'table_id', 'column_num', 'jurisdiction', 'question_context', 'question', 'answer'], num_rows: 3400 }) ``` ### Data Instance An instance of `ui_survey` (here, index 13) looks like ```json { "table_id": "2-5", "table_name": "BENEFIT-WAGE-RATIO FORMULA STATES", "table_description": "Details of years used for benefits and payrolls in benefit-wage-ratio formula states", "notes": "", "table_data": "[{'state': 'DE', 'years_of_benefits_used': 'Last 3 years', 'years_of_payrolls_used': 'Last 3 years'}, {'state': 'OK', 'years_of_benefits_used': 'Last 3 years', 'years_of_payrolls_used': 'Last 3 years'}]", 'chapter': '2', 'headers': "{'state': string[python], 'years_of_benefits_used': string[python], 'years_of_payrolls_used': string[python]}", 'prompt_context': 'BENEFIT-WAGE-RATIO FORMULA—The benefit-wage-ratio formula is significantly different from the other formulas. It makes no attempt to measure all benefits paid to the workers of individual employers. The relative experience of employers is measured by the separations of workers which result in benefit payments, but the duration of their benefits is not a factor. The separations, weighted with the wages earned by the workers with each base period employer, are recorded on each employer’s experience rating record as “benefit wages.” Only one separation per beneficiary per benefit year is recorded for any one employer. The index which is used to establish the relative experience of employers is the proportion of each employer’s payroll which is paid to those workers who become unemployed and receive benefits (i.e., the ratio of an employer’s benefit wages to total taxable wages). The ratio of total benefit payments and total benefit wages, known as the state experience factor, means that, on average, the workers who drew benefits received a certain amount of benefits for each dollar of benefit wages paid and the same amount of taxes per dollar of benefit wages is needed to replenish the fund. The total amount to be raised is distributed among employers in accordance with their benefit-wage-ratios; the higher the ratio, the higher the rate. \nIndividual employer rates are determined by multiplying the employer’s experience factor by the state experience factor. The multiplication is facilitated by a table, which assigns rates that are the same as, or slightly more than, the product of the employer’s benefit-wage-ratio and the state factor.', 'prompts': "['Given the description above, what are the years of benefits used to calculate the benefit-wage ratio in {jurisdiction}?', 'Given the description above, what are the years of payrolls used to calculate the benefit-wage ratio in {jurisdiction}?']" "chapter": "2", "headers": "{'state': string[python], 'years_of_benefits_used': string[python], 'years_of_payrolls_used': string[python]}", "prompt_context": "BENEFIT-WAGE-RATIO FORMULA—The benefit-wage-ratio formula is significantly different from the other formulas. It makes no attempt to measure all benefits paid to the workers of individual employers. The relative experience of employers is measured by the separations of workers which result in benefit payments, but the duration of their benefits is not a factor. The separations, weighted with the wages earned by the workers with each base period employer, are recorded on each employer’s experience rating record as “benefit wages.” Only one separation per beneficiary per benefit year is recorded for any one employer. The index which is used to establish the relative experience of employers is the proportion of each employer’s payroll which is paid to those workers who become unemployed and receive benefits (i.e., the ratio of an employer’s benefit wages to total taxable wages). The ratio of total benefit payments and total benefit wages, known as the state experience factor, means that, on average, the workers who drew benefits received a certain amount of benefits for each dollar of benefit wages paid and the same amount of taxes per dollar of benefit wages is needed to replenish the fund. The total amount to be raised is distributed among employers in accordance with their benefit-wage-ratios; the higher the ratio, the higher the rate. \nIndividual employer rates are determined by multiplying the employer’s experience factor by the state experience factor. The multiplication is facilitated by a table, which assigns rates that are the same as, or slightly more than, the product of the employer’s benefit-wage-ratio and the state factor.", "prompts": "['Given the description above, what are the years of benefits used to calculate the benefit-wage ratio in {jurisdiction}?', 'Given the description above, what are the years of payrolls used to calculate the benefit-wage ratio in {jurisdiction}?']" } ``` where in this instance ```python >>> pd.DataFrame.from_records(table_data[13]) state years_of_benefits_used years_of_payrolls_used 0 DE Last 3 years Last 3 years 1 OK Last 3 years Last 3 years ``` An instance of `ui_qas` looks like ```json { "idx": 0, "table_id": "1-1", "column_num": 0, "jurisdiction": "Alaska", "question_context": "EMPLOYERS As mentioned above, one of the basic factors in determining coverage is whether services are performed for employers. The coverage provisions of most state laws use the terms “employing unit” and “employer” to make the distinctions needed to address this issue. “Employing unit” is the more generic term, it applies to any one of several specified types of legal entities that has one or more individuals performing service for it within a state. An “employer” is an employing unit that meets the specific requirements of UI law. Accordingly, services provided for an “employer” are covered, and, as a result, an employer is subject to UI tax liability and its workers accrue rights to receive UI benefits. \nFor federal UI purposes, whether an employing unit is an employer depends on the number of days or weeks a worker is employed or the amount of the employing unit’s quarterly or yearly payroll. Except for agricultural labor and domestic service, FUTA applies to employing units who paid wages of $1,500 or more during any calendar quarter in the current or immediately preceding calendar year, or to employing units with one or more workers on at least one day in each of 20 different weeks during the current or immediately preceding calendar year. About half of the states use this federal definition. \nThe following table provides information on which employing units are considered employers in each state that uses a definition other than the one in FUTA.", "question": "Given the description above, what is either the minimum period of time or the payroll required for an employing unit to be considered an employer in Alaska?", "answer": "Any time" } ``` ### Data Fields #### `ui_tables` * `table_id`: str, ID of table written as "[chapter no.]-[table no. within chapter]" (derived from DoL report) * `table_name`: str, title of the table as noted on the DoL report * `table_description`: str, description of the table * `note`: str, any footnotes and other key information stored for this table * `table_data`: str, the data from this table as derived from the DoL report * `eval(...)` should produce a list of dictionaries corressponding to the table * `chapter`: str, chapter the table appears in (TODO: replace with descriptor) * `header`: str, string representation of headers with their respective datatypes * `eval(...)` should produce a dictionary * `prompt_context`: str, context for the table and prompts associated with the table (intended to precede the prompts in queries) * `prompts`: str, prompts to be used * It should be that `len(prompts) == len(headers)` * These prompts are used to derive the questions in `ui_tables` #### `ui_qas` * `idx`: int, index of question-answer pair * `table_id`: str, ID of table the question corresponds to, written as "[chapter no.]-[table no. within chapter]" (derived from DoL report) * `column_num`: str, the column number that the (relative to headers) * `jurisdiction`: jurisidction (state or territory) * `question_context`: str, context for the table in question (intended to precede the question in queries) * `question`: str, question whose response is intended to fill in the entry corressponding to `table_id` and `column_num` for `jurisidiction` * `answer`: str, answer to the question (from DoL report)