论文标题
使收费预测混淆的知识感知方法
Knowledge-aware Method for Confusing Charge Prediction
论文作者
论文摘要
自动收费预测任务旨在根据刑事案件的事实描述来确定最终指控,这是法律助理系统的重要应用。传统作品通常取决于事实描述以预测指控,同时忽略法律示意性知识,这使得很难区分混乱的指控。在本文中,我们提出了一个知识倾向的神经网络模型,该模型介绍了有关指控的法律示意性知识,并利用知识等级表示作为判别特征,以区分混乱的指控。我们的模型将文本事实描述作为输入,并通过图形卷积网络学习事实表示。法律示意性知识变压器被用来产生针对模式和充电水平的法律示意性知识的关键知识表示。我们将知识匹配网络应用于有效地将费用信息纳入事实中,以学习知识吸引的事实表示。最后,我们将知识吸引的事实表示来进行指控预测。我们创建了两个现实世界数据集,实验结果表明,我们提出的模型可以在准确性和F1分数上胜过其他最先进的基准,尤其是在处理混乱的费用时。
Automatic charge prediction task aims to determine the final charges based on fact descriptions of criminal cases, which is a vital application of legal assistant systems. Conventional works usually depend on fact descriptions to predict charges while ignoring the legal schematic knowledge, which makes it difficult to distinguish confusing charges. In this paper, we propose a knowledge-attentive neural network model, which introduces legal schematic knowledge about charges and exploit the knowledge hierarchical representation as the discriminative features to differentiate confusing charges. Our model takes the textual fact description as the input and learns fact representation through a graph convolutional network. A legal schematic knowledge transformer is utilized to generate crucial knowledge representations oriented to the legal schematic knowledge at both the schema and charge levels. We apply a knowledge matching network for effectively incorporating charge information into the fact to learn knowledge-aware fact representation. Finally, we use the knowledge-aware fact representation for charge prediction. We create two real-world datasets and experimental results show that our proposed model can outperform other state-of-the-art baselines on accuracy and F1 score, especially on dealing with confusing charges.