Legal Party Extraction from Legal Opinion Texts Using Recurrent Deep Neural Networks

J. Data Intell. Pub Date : 2022-08-01 DOI:10.26421/jdi3.3-4
Chamodi Samarawickrama, Melonie de Almeida, Nisansa de Silva, Gathika Ratnayaka, A. Perera
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引用次数: 1

Abstract

Since the advent of deep learning based Natural Language Processing (NLP), diverse domains of human society have benefited form automation and the resultant increment in efficiency. Law and order are, undoubtedly, crucial for the proper functioning of society; for without law there would be chaos, failing to offer equality to everyone. The legal domain being such a vital field, the incorporation of NLP into its workings has drawn attention in many research studies. This study attempts to leverage NLP into the task of extracting legal parties from legal opinion text documents. This task is of high importance given the significance of existing legal cases on contemporary cases under the legal practice, \textit{case law}. This study proposes a novel deep learning methodology which can be effectively used to resolve the problem of identifying legal party members in legal documents. We present two models here, where the first is a BRNN model to detect whether an entity is a legal party or not, and a second, a modification of the same neural network, to classify the thus identified entities into petitioner and defendant classes. Furthermore, in this study, we introduce a novel data set which is annotated with legal party information by an expert in the legal domain. With the use of the said dataset, we have trained and evaluated our models where the experiments carried out support satisfactory performance of our solution. The deep learning model we hereby propose, provides a benchmark for the legal party identification task on this data set. Evaluations for the solution presented in the paper show that our system has 90.89\% precision and 91.69\% recall for legal party extraction from an unseen paragraph from a legal document. As for the classification of petitioners and defendants, we show that GRU-512 obtains the highest F1 score.
基于递归深度神经网络的法律意见书当事人提取
自基于深度学习的自然语言处理(NLP)出现以来,人类社会的各个领域都受益于自动化及其效率的提高。毫无疑问,法律和秩序对社会的正常运转至关重要;因为没有法律,就会出现混乱,无法为每个人提供平等。法律领域是一个如此重要的领域,将自然语言处理纳入其工作已经引起了许多研究的关注。本研究试图利用自然语言处理从法律意见书文本文件中提取法律当事人的任务。鉴于现有法律案例对当代法律实践——\textit{判例法}下案例的重要意义,这一任务具有十分重要的意义。本研究提出了一种新颖的深度学习方法,可以有效地解决法律文件中合法党员的识别问题。我们在这里提出了两个模型,其中第一个是BRNN模型,用于检测实体是否为合法方,第二个是同一神经网络的修改,用于将由此识别的实体分为请愿者和被告类别。此外,在本研究中,我们引入了一个新的数据集,该数据集由法律领域的专家注释了法律当事人的信息。使用上述数据集,我们已经训练和评估了我们的模型,其中进行的实验支持我们的解决方案的令人满意的性能。我们在此提出的深度学习模型为该数据集上的法律当事人识别任务提供了基准。对本文提出的解决方案的评估表明,我们的系统在从法律文件中提取未见过的段落时具有90.89%的准确率和91.69%的召回率。对于上诉人和被告的分类,我们发现GRU-512获得了最高的F1分。
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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