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--- |
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license: cc-by-nc-sa-4.0 |
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source_datasets: |
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- coastalcph/eu_debates |
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language_creators: |
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- found |
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multilinguality: |
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- multilingual |
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language: |
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- bg |
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- cs |
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- da |
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- de |
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- el |
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- en |
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- es |
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- et |
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- fi |
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- fr |
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- hr |
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- hu |
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- it |
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- lt |
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- lv |
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- mt |
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- nl |
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- pl |
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- pt |
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- ro |
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- sk |
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- sl |
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- sv |
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tags: |
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- politics |
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size_categories: |
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- 10K<n<100K |
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pretty_name: EU Debates (JSONL Conversion) |
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--- |
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# Dataset Description |
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This dataset is a **conversion of the original [`coastalcph/eu_debates`](https://huggingface.co/datasets/coastalcph/eu_debates)** dataset released by [Chalkidis and Brandl (2024)](https://arxiv.org/abs/2403.13592). |
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The goal of this repository is to provide the same underlying data **without a Python loading script**, in a standard format (JSON Lines / Parquet) compatible with the current Hugging Face `datasets` library and automated data loading. |
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The original EU Debates corpus consists of approx. 87k individual speeches in the period 2009–2023. |
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The data was exhaustively scraped from the official European Parliament Plenary website ([link](https://www.europarl.europa.eu/)). All speeches are time-stamped, thematically organized in debates, and include metadata about: |
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- the speaker's identity (full name, euro-party affiliation, speaker role), |
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- the debate (date and title), |
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- language information, and (where available) machine-translated versions in English. |
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Older debate speeches are originally in English, while newer ones are linguistically diverse across the 23 official EU languages. Machine-translated English versions are provided using the EasyNMT framework with the [M2M-100 (418M)](https://huggingface.co/facebook/m2m100_418M) model (Fan et al., 2020). |
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This repository only changes the **storage format** (to `train.jsonl` / Parquet) and **removes the Python loading script**. |
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The data contents and fields are preserved from the original dataset. |
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# Data Fields |
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Each row / JSONL line is a single speech with the following fields: |
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- `speaker_name`: `string`, full name of the speaker. |
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- `speaker_party`: `string`, name of the euro-party (group) that the MEP is affiliated with. |
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- `speaker_role`: `string`, role of the speaker (e.g., Member of the European Parliament (MEP), EUROPARL President). |
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- `debate_title`: `string`, title of the debate in the European Parliament. |
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- `date`: `string`, full date of the speech in `YYYY-MM-DD` format. |
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- `year`: `string`, year of the speech in `YYYY` format. |
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- `intervention_language`: `string`, language code of the original intervention. |
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- `original_language`: `string`, language code of the original text. |
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- `text`: `string`, full original speech of the speaker. |
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- `translated_text`: `string` or `null`, machine translation of the speech into English if the original is not English, otherwise `null`. |
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# Data Instances |
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Example of a data instance: |
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```json |
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{ |
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"speaker_name": "Michèle Striffler", |
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"speaker_party": "PPE", |
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"speaker_role": "MEP", |
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"debate_title": "Famine in East Africa (debate)", |
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"date": "2011-09-15", |
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"year": "2011", |
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"intervention_language": "fr", |
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"original_language": "fr", |
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"text": "Monsieur le Président, Madame le Commissaire, chers collègues, la situation humanitaire sans précédent que connaît la Corne de l'Afrique continue [...]", |
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"translated_text": "Mr. President, Mr. Commissioner, dear colleagues, the unprecedented humanitarian situation of the Horn of Africa continues [...]" |
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} |
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``` |
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# How to Use |
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### From the Hugging Face Hub |
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If the dataset is hosted under `RJuro/eu_debates`: |
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```python |
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from datasets import load_dataset |
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eu_debates = load_dataset("RJuro/eu_debates", split="train") |
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``` |
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### From Local Files |
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If you downloaded the `train.jsonl` file locally: |
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```python |
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from datasets import load_dataset |
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eu_debates = load_dataset( |
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"json", |
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data_files={"train": "train.jsonl"}, |
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split="train", |
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) |
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``` |
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If you use Parquet instead: |
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```python |
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from datasets import load_dataset |
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eu_debates = load_dataset( |
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"parquet", |
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data_files={"train": "train.parquet"}, |
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split="train", |
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) |
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``` |
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# Dataset Statistics |
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The statistics below are inherited from the original `coastalcph/eu_debates` dataset. |
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### Distribution of speeches across euro-parties: |
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| Euro-party | No. of Speeches | |
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|-------------|-----------------| |
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| EPP | 25,455 (29%) | |
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| S&D | 20,042 (23%) | |
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| ALDE | 8,946 (10%) | |
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| ECR | 7,493 (9%) | |
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| ID | 6,970 (8%) | |
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| GUE/NGL | 6,780 (8%) | |
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| Greens/EFA | 6,398 (7%) | |
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| NI | 5,127 (6%) | |
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| **Total** | **87,221** | |
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### Distribution of speeches across years and euro-parties: |
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| Year | EPP | S&D | ALDE | ECR | ID | GUE/NGL | Greens/EFA | NI | Total | |
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|---|---|---|---|---|---|---|---|---|---| |
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| 2009 | 748 | 456 | 180 | 138 | 72 | 174 | 113 | 163 | **2044** | |
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| 2010 | 3205 | 1623 | 616 | 340 | 341 | 529 | 427 | 546 | **7627** | |
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| 2011 | 4479 | 2509 | 817 | 418 | 761 | 792 | 490 | 614 | **10880** | |
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| 2012 | 3366 | 1892 | 583 | 419 | 560 | 486 | 351 | 347 | **8004** | |
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| 2013 | 724 | 636 | 240 | 175 | 152 | 155 | 170 | 154 | **2406** | |
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| 2014 | 578 | 555 | 184 | 180 | 131 | 160 | 144 | 180 | **2112** | |
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| 2015 | 978 | 1029 | 337 | 405 | 398 | 325 | 246 | 240 | **3958** | |
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| 2016 | 919 | 972 | 309 | 387 | 457 | 317 | 225 | 151 | **3737** | |
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| 2017 | 649 | 766 | 181 | 288 | 321 | 229 | 162 | 135 | **2731** | |
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| 2018 | 554 | 611 | 161 | 242 | 248 | 175 | 160 | 133 | **2284** | |
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| 2019 | 1296 | 1339 | 719 | 556 | 513 | 463 | 490 | 353 | **5729** | |
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| 2020 | 1660 | 1564 | 823 | 828 | 661 | 526 | 604 | 346 | **7012** | |
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| 2021 | 2147 | 2189 | 1290 | 1062 | 909 | 708 | 990 | 625 | **9920** | |
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| 2022 | 2436 | 2273 | 1466 | 1177 | 827 | 962 | 1031 | 641 | **10813** | |
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| 2023 | 1716 | 1628 | 1040 | 878 | 619 | 779 | 795 | 499 | **7954** | |
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### Distribution of speeches across the 23 EU official languages: |
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| Language | No. of Speeches | |
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|----------|-----------------| |
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| en | 40,736 (46.7%) | |
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| de | 6,497 (7.5%) | |
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| fr | 6,024 (6.9%) | |
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| es | 5,172 (5.9%) | |
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| it | 4,506 (5.2%) | |
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| pl | 3,792 (4.4%) | |
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| pt | 2,713 (3.1%) | |
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| ro | 2,308 (2.7%) | |
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| el | 2,290 (2.6%) | |
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| nl | 2,286 (2.6%) | |
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| hu | 1,661 (1.9%) | |
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| hr | 1,509 (1.7%) | |
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| cs | 1,428 (1.6%) | |
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| sv | 1,210 (1.4%) | |
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| bg | 928 (1.1%) | |
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| sk | 916 (1.1%) | |
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| sl | 753 (0.9%) | |
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| fi | 693 (0.8%) | |
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| lt | 618 (0.7%) | |
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| da | 578 (0.7%) | |
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| et | 342 (0.4%) | |
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| lv | 184 (0.2%) | |
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| mt | 0 (0.0%) | |
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# Citation Information |
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If you use this dataset, please cite the original work: |
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> Llama meets EU: Investigating the European political spectrum through the lens of LLMs. |
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> Ilias Chalkidis and Stephanie Brandl. |
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> In the Proceedings of the Annual Conference of the North American Chapter of the Association for Computational Linguistics (NAACL), |
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> Mexico City, Mexico, June 16–21, 2024. |
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```bibtex |
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@inproceedings{chalkidis-and-brandl-eu-llama-2024, |
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title = "Llama meets EU: Investigating the European political spectrum through the lens of LLMs", |
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author = "Chalkidis, Ilias and Brandl, Stephanie", |
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booktitle = "Proceedings of the 2024 Conference of the North American Chapter of the Association for Computational Linguistics", |
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month = jun, |
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year = "2024", |
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address = "Mexico City, Mexico", |
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publisher = "Association for Computational Linguistics", |
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} |
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``` |
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This repository only provides a format-converted, script-free version of the original dataset; all credit for data collection and annotation goes to the original authors. |