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Claim Detection in Judgments of the EU Court of Justice

机译:在欧盟司法法院的判决中索赔探查

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摘要

Mining arguments from text has recently become a hot topic in Artificial Intelligence. The legal domain offers an ideal scenario to apply novel techniques coming from machine learning and natural language processing, addressing this challenging task. Following recent approaches to argumentation mining in juridical documents, this paper presents two distinct contributions. The first one is a novel annotated corpus for argumentation mining in the legal domain, together with a set of annotation guidelines. The second one is the empirical evaluation of a recent machine learning method for claim detection in judgments. The method, which is based on Tree Kernels, has been applied to context-independent claim detection in other genres such as Wikipedia articles and essays. Here we show that this method also provides a useful instrument in the legal domain, especially when used in combination with domain-specific information.
机译:来自文本的挖掘争论最近成为人工智能的热门话题。法律域提供理想的情景,以应用来自机器学习和自然语言处理的新颖技术,解决这一具有挑战性的任务。近期对常规文件中的论证挖掘的方法之后,本文提出了两个不同的贡献。第一个是一个新的注释语料库,用于法律领域的论证挖掘,以及一套注释指南。第二个是对判断中最近的索赔检测的机器学习方法的实证评价。基于树内核的方法已经应用于其他类型的无关的无关的索赔检测,例如维基百科物品和散文。在这里,我们显示该方法还在法律域中提供了一个有用的仪器,尤其是与特定于域的信息组合使用时。

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