基于深度学习模型的法庭文书判决书修辞状态识别方法

Vu D. Tran, M. Nguyen, Kiyoaki Shirai, K. Satoh
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引用次数: 1

摘要

在法庭文书中,句子的修辞状态传达了句子的意图,它是一个主张还是包含支持证据,因此,有利于法庭文书处理系统,例如法庭文书检索系统。此外,修辞结构分析在自然语言处理中也有重要的应用,如文本摘要、情感分析、问答等。分析的输出结构包含子句之间的高层关系,因此提供了有价值的信息。尽管自动修辞结构分析有着广泛的应用和法庭文书自动处理的必要性,但在法律领域却没有得到很好的关注。我们建议使用深度学习模型来处理识别法庭文件中每个句子的修辞状态的任务。深度学习已被证明对包括话语分析在内的自然语言处理任务有效。我们在该任务中取得了令人满意的结果,这表明人工神经模块嵌入修辞信息在其他任务中的适用性,例如摘要和信息检索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Approach of Rhetorical Status Recognition for Judgments in Court Documents using Deep Learning Models
In a court document, the rhetorical status of a sentence conveys the intention of the sentence, whether is is a claim or contains supporting evidences, thus, is beneficial to court document processing systems, for example, court document retrieval systems. Besides, rhetorical structure analysis has high-impact applications in natural language processing, for instances, text summarization, sentiment analysis, question answering. The output structures of the analysis contain high-level relationship between clauses and so provides valuable information. Despite of a wide range of applications and the necessity for automatic court document processing, automatic rhetorical structure analysis has not been well noticed in the legal domain. We propose to use deep learning models for tackling the task of recognizing the rhetorical status of each sentence in a court document. Deep learning has been shown effective towards natural language processing tasks including discourse analysis. We have achieved promising results for the task, which suggests the applicability of artificial neural module embedding rhetorical information for other tasks, for example, summarization and information retrieval.
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