通过深度学习在法律领域执行的任务:文献计量学回顾(1987-2020)

A. Montelongo, J. Becker
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引用次数: 0

摘要

深度学习(DL)已经成为自然语言处理(NLP)最先进的方法。在过去的五年中,深度学习成为法律领域主要的人工智能(AI)方法。在这项工作中,我们对利用深度学习作为主要方法的出版物进行了系统的文献计量学回顾。我们特别分析了执行的目标(执行的任务)、用于训练模型的语料库和有前途的研究领域。样本包括1987年至2020年间出版的137部作品。这个分析从法律领域的第一个深度学习模型(以前的神经网络)开始,直到今年的最新文章。我们的结果表明,在过去的5年中,出版物总数增加了300%,主要是在信息提取和分类任务上。此外,分类是出版物最多的类别,占总样本的39%。最后,我们确定摘要和文本生成是有前途的研究领域。这些发现表明,法律领域的深度学习目前正处于发展阶段,因此它将是未来几年研究的一个有前途的主题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tasks performed in the legal domain through Deep Learning: A bibliometric review (1987–2020)
Deep Learning (DL) has become the state-of-the-art method for Natural Language Processing (NLP). During the last 5 years DL became the primary Artificial Intelligence (AI) method in the legal domain. In this work we provide a systematic bibliometric review of the publications that have utilized DL as the primary methodology. In particular we analyzed the performed objectives (performed tasks), the corpus utilized to train the models and promising areas of research. The sample includes a total of 137 works published between 1987 and 2020. This analysis starts with the first DL models (formerly Neural Networks) in the legal domain until the latest articles in the ongoing year. Our results show an increment of 300% on the total number of publications during the last 5 years, mainly on information extraction and classification tasks. Moreover, classification is the category with most publications with 39% of the total sample. Finally, we have identified that summarization and text generation as promising areas of research. These findings show that DL in the legal domain is currently in a growing stage, and hence it will be a promising topic of research in the coming years.
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