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Legal Judgment Prediction with Label Dependencies

机译:具有标签依赖关系的法律判断预测

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摘要

Legal Judgment Prediction (LJP) is a key technique for social fair. It aims to predict the judicial decisions automatically given the fact description and has great prospects in judicial assistance and management. This article focuses on the prediction of criminal judgment and proposes a legal domain-oriented method for the LJP task, by exploiting the dependencies of labels across tasks of LJP. The proposed method captures the dependencies by a prediction forward-propagate mechanism over a directed heterogeneous graph, and a novel prediction task, attribute prediction. The experiments prove the efficiency of the method and show the superior of our model on real-world datasets.
机译:法律判断预测(LJP)是社会公平的一项关键技术。它旨在根据事实描述自动预测司法判决,在司法协助和管理方面具有广阔的前景。本文着重于刑事判决的预测,并通过利用跨LJP任务之间标签的依赖性,为LJP任务提出了一种面向法律领域的方法。所提出的方法通过对有向异构图的预测正向传播机制以及一种新颖的预测任务属性预测来捕获依存关系。实验证明了该方法的有效性,并在实际数据集上证明了我们模型的优越性。

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