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Extracting Facts from Case Rulings Through Paragraph Segmentation of Judicial Decisions

机译:通过司法决策段分割提取案例裁决的事实

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In order to justify rulings, legal documents need to present facts as well as an analysis built thereon. In this paper, we present two methods to automatically extract case-relevant facts from French-language legal documents pertaining to tenant-landlord disputes. Our models consist of an ensemble that classifies a given sentence as either Fact or non-Fact, regardless of its context, and a recurrent architecture that contextually determines the class of each sentence in a given document. Both models are combined with a heuristic-based segmentation system that identifies the optimal point in the legal text where the presentation of facts ends and the analysis begins. When tested on a dataset of rulings from the Regie du Logement of the city of ANONYMOUS, the recurrent architecture achieves a better performance than the sentence ensemble classifier. The fact segmentation task produces a splitting index which can be weighted in order to favour shorter segments with few instances of non-facts or longer segments that favour the recall of facts. Our best configuration successfully segments 40% of the dataset within a single sentence of offset with respect to the gold standard. An analysis of the results leads us to believe that the commonly accepted assumption that, in legal documents, facts should precede the analysis is often not followed.
机译:为了证明裁决,法律文件需要呈现事实以及建立在其上的分析。在本文中,我们提出了两种方法,可以自动提取与租户房东纠纷有关的法语法律文件的案件相关事实。我们的模型由一个组合组成,该集合将给定句子分类为事实或非事实,无论其上下文如何,以及上下一步确定给定文档中的每个句子的类的复发体系结构。这两种模型都与基于启发式的分割系统组合,该系统标识了法律文本中的最佳点,其中事实结束,分析开始。当从匿名城市的Regie du Logement进行裁决的DataSet上测试时,经常性架构比句子集装实事更好地实现了更好的性能。事实分割任务产生了可以加权的分裂索引,以便有利于较短的段,其中少数非事实或更长的段的延长召回事实的段。我们最好的配置成功分段为Gold标准的单个句子中的40%的数据集。对结果的分析导致我们相信普遍接受的假设,在法律文件中,往往不遵循分析。

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