大型法律语料库中缺失链接的检测

D. Devyatkin, Yana Pogorelskaya, V. Yadrintsev, I. Sochenkov
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引用次数: 1

摘要

法律文本与其他文件有大量的显性和隐性联系。提取这些联系将有助于更好地系统化和分析立法活动。法律文件通常是多主题和碎片化的,使得标准的主题相似度搜索方法无法显示这些链接。在本文中,我们提出了基于Siamese网络的方法,可以解决这个问题。我们的方法结合了SentenceBERT和Doc2Vec模型并生成文档级嵌入,这有助于构建大规模的法律信息检索系统。在俄语和多语种法律语料库上的实验验证了所提方法的适用性。也就是说,基于senencebert的模型表现出最好的性能,尽管它们必须在多语言标记的语料库上进行微调。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Missed Links in Large Legal Corpora
Legal texts have a large number of explicit and implicit links to other documents. Extraction of those links would help to systematize and analyze lawmaking activity better. Legal documents are often multi-topic and fragmented, making standard topical similarity search methods useless to reveal those links. In this paper, we propose Siamese network-based approaches, which can tackle that problem. Our approaches incorporate SentenceBERT and Doc2Vec models and generate document-level embeddings, which can be helpful to build a large-scale legal information retrieval system. The experiments on Russian and multilingual legal corpora confirm the applicability of the proposed methods. Namely, SentenceBERT-based models show the best performance, although they have to be fine-tuned on a multilingual labeled corpus.
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