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A Neural Network Based Method for Judging the Rationality of Litigation Request

机译:基于神经网络的诉讼请求合理性判断方法

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With the advancement of the construction of the intelligence court, artificial intelligence technology has become more and more significant in the litigation risk analysis. The reasonable prediction of the litigation request can guide the parties to form a reasonable litigation expectation and guide the case diversion; it can also provide intelligent risk warning to assist judges. The current litigation request reasonable prediction method has a low accuracy rate, and lacks a method for rationalizing the expectation of heterogeneous and diverse cases; at the same time, based on machine learning methods, some research focus on the rationality judgment of litigation requests. However, the rationality of litigation request feature design, selection and model are still to be explored. In this paper, we propose a rationality prediction framework for litigation requests based on multi-party evidence correlation model and neural network. Firstly, based on the judicial knowledge of litigation request and the multi-party evidence association model, the judicial characteristics of the reasonableness of litigation request is designed. Then we train and predict the judicial features based on the deep neural network model. Finally, the prediction and evaluation of the reasonableness of litigation is realized.
机译:随着情报法庭建设的推进,人工智能技术在诉讼风险分析中的作用越来越重要。对诉讼请求的合理预测,可以指导当事人形成合理的诉讼预期,并指导案件转移。它还可以提供智能的风险警告,以协助法官。当前的诉讼请求合理预测方法准确率低,缺乏使异质,多样案件的期望合理化的方法。同时,基于机器学习方法,一些研究侧重于诉讼请求的合理性判断。但是,诉讼请求特征设计,选择和模型的合理性仍有待探索。本文提出了一种基于多方证据关联模型和神经网络的诉讼请求合理性预测框架。首先,基于诉讼请求的司法知识和多方证据关联模型,设计了诉讼请求合理性的司法特征。然后,我们基于深度神经网络模型对司法特征进行训练和预测。最后,实现了对诉讼合理性的预测和评价。

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