Abstractive Summarization of Dutch Court Verdicts Using Sequence-to-sequence Models

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Abstract

With the legal sector embracing digitization, the increasing availability of information has led to a need for systems that can automatically summarize legal documents. Most existing research on legal text summarization has so far focused on extractive models, which can result in awkward summaries, as sentences in legal documents can be very long and detailed. In this study, we apply two abstractive summarization models on a Dutch legal domain dataset. The results show that existing models transfer quite well across domains and languages: the ROUGE scores of our experiments are comparable to state-of-the-art studies on English news article texts. Examining one of the models showed the capability of rewriting long legal sentences to much shorter ones, using mostly vocabulary from the source document. Human evaluation shows that for both models hand-made summaries are still perceived as more relevant and readable, and automatic summaries do not always capture elements such as background, considerations and judgement. Still, generated summaries are valuable if only a keyword summary or no summary at all is present.

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APA

van de Luijtgaarden, N., Prijs, D., Schraagen, M., & Bex, F. (2022). Abstractive Summarization of Dutch Court Verdicts Using Sequence-to-sequence Models. In NLLP 2022 - Natural Legal Language Processing Workshop 2022, Proceedings of the Workshop (pp. 76–87). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2022.nllp-1.7

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