Extractive Summarization of Legal Decisions using Multi-task Learning and Maximal Marginal Relevance

Abhishek Agarwal, Shanshan Xu, Matthias Grabmair

Publikation: KonferenzbeitragPapierBegutachtung

4 Zitate (Scopus)

Abstract

Summarizing legal decisions requires the expertise of law practitioners, which is both time- and cost-intensive. This paper presents techniques for extractive summarization of legal decisions in a low-resource setting using limited expert annotated data. We test a set of models that locate relevant content using a sequential model and tackle redundancy by leveraging maximal marginal relevance to compose summaries. We also demonstrate an implicit approach to help train our proposed models generate more informative summaries. Our multi-task learning model variant leverages rhetorical role identification as an auxiliary task to further improve the summarizer. We perform extensive experiments on datasets containing legal decisions from the US Board of Veterans' Appeals and conduct quantitative and expert-ranked evaluations of our models. Our results show that the proposed approaches can achieve ROUGE scores vis-à-vis expert extracted summaries that match those achieved by inter-annotator comparison.

OriginalspracheEnglisch
Seiten1857-1872
Seitenumfang16
PublikationsstatusVeröffentlicht - 2022
Veranstaltung2022 Findings of the Association for Computational Linguistics: EMNLP 2022 - Abu Dhabi, Vereinigte Arabische Emirate
Dauer: 7 Dez. 202211 Dez. 2022

Konferenz

Konferenz2022 Findings of the Association for Computational Linguistics: EMNLP 2022
Land/GebietVereinigte Arabische Emirate
OrtAbu Dhabi
Zeitraum7/12/2211/12/22

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