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Legal Judgment Prediction via Multi-Perspective Bi-Feedback Network

机译:通过多视角双反馈网络预测法律判断预测

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The Legal Judgment Prediction (LJP) is to determine judgment results based on the fact descriptions of the cases. LJP usually consists of multiple subtasks, such as applicable law articles prediction, charges prediction, and the term of the penalty prediction. These multiple subtasks have topological dependencies, the results of which affect and verify each other. However, existing methods use dependencies of results among multiple subtasks inefficiently. Moreover, for cases with similar descriptions but different penalties, current methods cannot predict accurately because the word collocation information is ignored. In this paper, we propose a Multi-Perspective Bi-Feedback Network with the Word Collocation Attention mechanism based on the topology structure among subtasks. Specifically, we design a multi-perspective forward prediction and backward verification framework to utilize result dependencies among multiple subtasks effectively. To distinguish cases with similar descriptions but different penalties, we integrate word collocations features of fact descriptions into the network via an attention mechanism. The experimental results show our model achieves significant improvements over baselines on all prediction tasks.
机译:法律判断预测(LJP)是根据案件的事实描述确定判断结果。 LJP通常由多个子特写组成,例如适用的法律文章预测,收费预测和罚款预测的术语。这些多个子任务具有拓扑依赖性,其结果影响和识别彼此。但是,现有方法使用多个子任务之间的结果依赖性效率低下。此外,对于具有相似描述但不同惩罚的情况,当前方法不能准确地预测,因为忽略了单词搭配信息。在本文中,我们提出了一种基于子任务之间的拓扑结构的拓扑结构的多视角双反馈网络。具体地,我们设计了多视角前向预测和后退验证框架,以有效地利用多个子任务之间的结果依赖性。为了区分具有相似描述的案例,但不同的惩罚,我们通过注意机制将事实描述的文字搭配特征集成到网络中。实验结果表明我们的模型在所有预测任务上实现了对基线的显着改进。

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