论文标题
AI领导法院辩论案件调查
AI-lead Court Debate Case Investigation
论文作者
论文摘要
由原告,被告和法官组成的多角色司法辩论是司法审判的重要组成部分。与其他类型的对话不同,法官,原告,原告的代理人被告和被告的代理人将提出问题,以便审判,以便审判可以有序地进行。问题产生是自然语言产生的重要任务。在司法审判中,它可以帮助法官提出有效的问题,以使法官对案件有更清晰的了解。在这项工作中,我们提出了一个创新的端到端问题生成模型 - 试验大脑模型(TBM),以建立一个试验大脑,它可以产生法官希望通过原告与被告之间的历史对话提出的问题。与自然语言生成的先前努力不同,我们的模型可以通过预定义的知识来学习法官的质疑意图。我们对现实世界数据集进行了实验,实验结果表明,我们的模型可以在多角色法院辩论场景中提供更准确的问题。
The multi-role judicial debate composed of the plaintiff, defendant, and judge is an important part of the judicial trial. Different from other types of dialogue, questions are raised by the judge, The plaintiff, plaintiff's agent defendant, and defendant's agent would be to debating so that the trial can proceed in an orderly manner. Question generation is an important task in Natural Language Generation. In the judicial trial, it can help the judge raise efficient questions so that the judge has a clearer understanding of the case. In this work, we propose an innovative end-to-end question generation model-Trial Brain Model (TBM) to build a Trial Brain, it can generate the questions the judge wants to ask through the historical dialogue between the plaintiff and the defendant. Unlike prior efforts in natural language generation, our model can learn the judge's questioning intention through predefined knowledge. We do experiments on real-world datasets, the experimental results show that our model can provide a more accurate question in the multi-role court debate scene.