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JEDoDF: Judicial Event Discrimination Based on Deep Forest

机译:JEDF:基于深林的司法事件歧视

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With the rapid development of natural language and the implementation of the Wisdom Court, intelligent judicial assistants has become a new application of natural language processing in the judicial field. The text classification method based on word vector and deep neural network implements statistical classification of judicial documents, but it can not achieve the inherent logical interpretation of judicial cases. A method of extracting semantic logic tree from judicial case texts is proposed, and event tree can be interpreted by deep forest. Judicial documents are divided into several sub-tree fragments by sentence segmentation, and each sub-tree fragment is analyzed by dependency syntax to obtain core subject-predicate-object triples. TF-IDF algorithm is used to calculate the weights of triples, and get the core sub-event sequence, and use pruning algorithm to construct the max heap. The designed triple encoding algorithm realizes max heap vectorization of event tree, and embedded deep forest algorithm to realize classification discrimination of judicial text event tree. The experimental results show that the proposed event tree construction method combined with the deep forest algorithm can greatly improve the logical interpretation and accuracy of judicial text.
机译:随着自然语言的迅速发展和智慧法院的实施,智能司法助理已成为自然语言处理在司法领域的一种新应用。基于词向量和深度神经网络的文本分类方法实现了司法文书的统计分类,但无法实现司法案件的内在逻辑解释。提出了一种从司法案件文本中提取语义逻辑树的方法,并可以用深林来解释事件树。通过句子分割将司法文档划分为几个子树片段,并通过依赖语法对每个子树片段进行分析,以获得核心的主语-谓语-宾语三元组。 TF-IDF算法用于计算三元组的权重,获得核心子事件序列,并使用修剪算法构造最大堆。设计的三重编码算法实现了事件树的最大堆矢量化,嵌入式深林算法实现了司法文本事件树的分类判别。实验结果表明,提出的事件树构造方法与深林算法相结合,可以大大提高司法文本的逻辑解释和准确性。

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