AsyLex / README.md
clairebarale's picture
Update README.md
9485a01
|
raw
history blame
3.71 kB
metadata
license: cc-by-nc-sa-4.0
language:
  - en
tags:
  - dataset
  - legalNLP
  - refugee law
pretty_name: AsyLex

Dataset Card for AsyLex

The dataset introduces 59,112 documents of refugee status determination in Canada from 1996 to 2022, providing researchers and practitioners with essential material for training and evaluating NLP models for legal research and case review.

The dataset contains labeled data suited for two NLP tasks: (1) Entity extraction and (2) Legal Judgment Prediction.

Dataset Details

The dataset includes gold-standard human-labeled annotations for 24 legally relevant entity types curated with the help of legal experts, and 1,682 gold-standard labeled documents for the outcome of the case.

The dataset can be split in two sets:

  • (1) a Case Covers set that consists of semi-structured data and displays meta-information (the first page of each case);
  • (2) a Main Text set that contains the body of each case, in full text.

Dataset Sources [optional]

The documents have been collected from the online services of the Canadian Legal Information Institute (CanLII).

Uses

  • License: cc-by-nc-sa-4.0

The dataset must be used for research purposes only. It must not be use for commercial purposes.

Dataset Structure

This dataset contains the following files:

file description
cases_anonymized_txt_raw.tar.gz contains the raw text from all documents, by case, with the corresponding case identifier
all_sentences_anonymized.tar.xz contains the raw text from all retrieved documents, split by sentences, with the corresponding case identifier
main_and_case_cover_all_entities_inferred.csv contains the structured dataset, all extracted entities (one column per entity type), with the corresponding case identifier
case_cover/case_cover_anonymised_extracted_entities.csv contains the structured dataset derived from the case covers only (one column per entity type), with the corresponding case identifier
case_cover/case_cover_entities_and_decision_outcome.csv same as above, with the addition of the decision outcome of the case
determination_label_extracted_sentences.csv contains all sentences that have been extracted with the Entity Type "determination". All sentences included here should therefore directly state the outcome of the decision, with the correspinding case identifier
outcome_train_test folder containing a train and test set for the task of outcome classificiation. Each set includes the case identifier and the decision outcome (0,1,2). The test set only contains gold-standard manually labeled data.
manual_annotations contains jsonl files of the manually collected annotations for the case cover and the main text

In all files containing the decision outcome, 0 refers to a "reject", 1 to a "granted", and 2 to "uncertain".

Personal and Sensitive Information

All documents have been anonymized.

Citation [optional]

Papers:

  • NLLP @EMNLP Publication: tba

  • ACL Publication: @inproceedings{barale-etal-2023-automated, title = "Automated Refugee Case Analysis: A {NLP} Pipeline for Supporting Legal Practitioners", author = "Barale, Claire and Rovatsos, Michael and Bhuta, Nehal", booktitle = "Findings of the Association for Computational Linguistics: ACL 2023", month = jul, year = "2023", address = "Toronto, Canada", publisher = "Association for Computational Linguistics", url = "https://aclanthology.org/2023.findings-acl.187", doi = "10.18653/v1/2023.findings-acl.187", pages = "2992--3005", }

Dataset Card Contact

Please contact the authors of the papers.