Litcius/Paper detail

Multi-language transfer learning for low-resource legal case summarization

Gianluca Moro, Nicola Piscaglia, Luca Ragazzi, Paolo Italiani

2023Artificial Intelligence and Law27 citationsDOIOpen Access PDF

Abstract

Abstract Analyzing and evaluating legal case reports are labor-intensive tasks for judges and lawyers, who usually base their decisions on report abstracts, legal principles, and commonsense reasoning. Thus, summarizing legal documents is time-consuming and requires excellent human expertise. Moreover, public legal corpora of specific languages are almost unavailable. This paper proposes a transfer learning approach with extractive and abstractive techniques to cope with the lack of labeled legal summarization datasets, namely a low-resource scenario. In particular, we conducted extensive multi- and cross-language experiments. The proposed work outperforms the state-of-the-art results of extractive summarization on the Australian Legal Case Reports dataset and sets a new baseline for abstractive summarization. Finally, syntactic and semantic metrics assessments have been carried out to evaluate the accuracy and the factual consistency of the machine-generated legal summaries.

Topics & Concepts

Automatic summarizationComputer scienceBaseline (sea)Natural language processingConsistency (knowledge bases)Artificial intelligenceLegal caseTransfer of learningResource (disambiguation)Information retrievalLawPolitical scienceComputer networkTopic ModelingArtificial Intelligence in LawNatural Language Processing Techniques