Summarizing Long Regulatory Documents with a Multi-Step Pipeline
Publication date
2024
Editors
Aletras, Nikolaos
Chalkidis, Ilias
Barrett, Leslie
Goanta, Catalina
Preotiuc-Pietro, Daniel
Spanakis, Gerasimos
Advisors
Supervisors
DOI
Document Type
Part of book
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License
cc_by
Abstract
Due to their length and complexity, long regulatory texts are challenging to summarize. To address this, a multi-step extractive-abstractive architecture is proposed to handle lengthy regulatory documents more effectively. In this paper, we show that the effectiveness of a twostep architecture for summarizing long regulatory texts varies significantly depending on the model used. Specifically, the two-step architecture improves the performance of decoder-only models. For abstractive encoder-decoder models with short context lengths, the effectiveness of an extractive step varies, whereas for longcontext encoder-decoder models, the extractive step worsens their performance. This research also highlights the challenges of evaluating generated texts, as evidenced by the differing results from human and automated evaluations. Most notably, human evaluations favoured language models pretrained on legal text, while automated metrics rank general-purpose language models higher. The results underscore the importance of selecting the appropriate summarization strategy based on model architecture and context length.
Keywords
Language and Linguistics, Computational Theory and Mathematics, Software, Linguistics and Language
Citation
Sie, M, Beek, R, Bots, M, Brinkkemper, S & Gatt, A 2024, Summarizing Long Regulatory Documents with a Multi-Step Pipeline. in N Aletras, I Chalkidis, L Barrett, C Goanta, D Preotiuc-Pietro & G Spanakis (eds), NLLP 2024 - Natural Legal Language Processing Workshop 2024, Proceedings of the Workshop. NLLP 2024 - Natural Legal Language Processing Workshop 2024, Proceedings of the Workshop, Association for Computational Linguistics (ACL), pp. 18-32, 6th Natural Legal Language Processing Workshop 2024, NLLP 2024, co-located with the 2024 Conference on Empirical Methods in Natural Language Processing, Miami, United States, 16/11/24., conference