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A deep neural network model for speakers coreference resolution in legal texts

机译:法律文本中扬声器练习分辨率的深度神经网络模型

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摘要

Coreference resolution is one of the fundamental tasks in natural language processing (NLP), and is of great significance to understand the semantics of texts. Meanwhile, resolving coreference is essential for many NLP downstream applications. Existing methods largely focus on pronouns, possessives and noun phrases resolution in the general domain, while little work is proposed for professional domains such as the legal field. Different from general texts, how to code legal texts and capture the relationship between entities in the text, and then resolve coreference is a challenging problem. For better understanding the legal text, and facilitating a series of downstream tasks in legal text mining, we propose a deep neural network model for coreference resolution in court record documents. Specifically, the pre-trained language model and bi-directional long short-term memory networks are first utilized to encode legal texts. Second, graph neural networks are applied to incorporate reference relations between entities. Finally, two distinct classifiers are used to score the candidate pairs. Results on the dataset show that our model achieves 87.53% Fl score on court record documents, outperforming neural baseline models by a large margin. Further analysis shows that the proposed method can effectively identify the reference relations between entities and model the entity dependencies.
机译:Coreference解析是自然语言处理中的基本任务之一(NLP),并且了解文本的语义具有重要意义。同时,解决Coreference对于许多NLP下游应用程序至关重要。现有方法主要集中在一般领域的代词,拥有者和名词短语中,虽然为法律领域等专业领域提出了很少的工作。与一般文本不同,如何编写法律文本并捕获文本中实体之间的关系,然后解决Coreference是一个具有挑战性的问题。为了更好地理解法律文本,并促进法律文本挖掘中的一系列下游任务,我们向法院记录文件中提出了一个深入的神经网络模型。具体地,首先使用预先训练的语言模型和双向长期内记忆网络来编码法律文本。其次,图形神经网络被应用于包含实体之间的参考关系。最后,使用两个不同的分类器来得分候选对。 DataSet上的结果表明,我们的型号在法庭记录文件中获得了87.53%的速度,优于大幅度的大幅度。进一步的分析表明,该方法可以有效地识别实体和模型实体依赖关系之间的参考关系。

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