Towards Cross-Domain Transferability of Text Generation Models for Legal Text

Vinayshekhar Bannihatti Kumar, Kasturi Bhattacharjee
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引用次数: 1

Abstract

Legalese can often be filled with verbose domain-specific jargon which can make it challenging to understand and use for non-experts. Creating succinct summaries of legal documents often makes it easier for user comprehension. However, obtaining labeled data for every domain of legal text is challenging, which makes cross-domain transferability of text generation models for legal text, an important area of research. In this paper, we explore the ability of existing state-of-the-art T5 & BART-based summarization models to transfer across legal domains. We leverage publicly available datasets across four domains for this task, one of which is a new resource for summarizing privacy policies, that we curate and release for academic research. Our experiments demonstrate the low cross-domain transferability of these models, while also highlighting the benefits of combining different domains. Further, we compare the effectiveness of standard metrics for this task and illustrate the vast differences in their performance.
法律文本生成模型的跨域可移植性研究
法律术语通常充满了冗长的领域特定术语,这对非专家来说很难理解和使用。为法律文件创建简洁的摘要通常会让用户更容易理解。然而,获取法律文本各个领域的标记数据具有挑战性,这使得法律文本生成模型的跨领域可移植性成为一个重要的研究领域。在本文中,我们探讨了现有的最先进的基于T5和bart的摘要模型跨法律领域转移的能力。我们利用四个领域的公开数据集来完成这项任务,其中一个是总结隐私政策的新资源,我们为学术研究策划和发布。我们的实验证明了这些模型的低跨领域可移植性,同时也突出了不同领域结合的好处。此外,我们比较了该任务的标准度量的有效性,并说明了它们在性能上的巨大差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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