Zhu Junlin, Wu Jiaye, Luo Xudong, Liu Jie
Guangxi Key Lab of Multi-Source Information Mining & Security, College of Computer Science and Engineering, Guangxi Normal University, Guilin, 541004 China.
Artif Intell Law (Dordr). 2023 Mar 14:1-30. doi: 10.1007/s10506-023-09354-x.
Recently, the pandemic caused by COVID-19 is severe in the entire world. The prevention and control of crimes associated with COVID-19 are critical for controlling the pandemic. Therefore, to provide efficient and convenient intelligent legal knowledge services during the pandemic, we develop an intelligent system for legal information retrieval on the WeChat platform in this paper. The data source we used for training our system is "The typical cases of national procuratorial authorities handling crimes against the prevention and control of the new coronary pneumonia pandemic following the law", which is published online by the Supreme People's Procuratorate of the People's Republic of China. We base our system on convolutional neural network and use the semantic matching mechanism to capture inter-sentence relationship information and make a prediction. Moreover, we introduce an auxiliary learning process to help the network better distinguish the relation between two sentences. Finally, the system uses the trained model to identify the information entered by a user and responds to the user with a reference case similar to the query case and gives the reference legal gist applicable to the query case.
最近,由COVID-19引发的疫情在全球范围内形势严峻。与COVID-19相关犯罪的防控对于控制疫情至关重要。因此,为了在疫情期间提供高效便捷的智能法律知识服务,我们在本文中开发了一个基于微信平台的法律信息检索智能系统。我们用于训练系统的数据源是中华人民共和国最高人民检察院在网上公布的《国家检察机关依法办理妨害新冠肺炎疫情防控犯罪典型案例》。我们的系统基于卷积神经网络,并使用语义匹配机制来捕捉句子间的关系信息并进行预测。此外,我们引入了一个辅助学习过程来帮助网络更好地辨别两个句子之间的关系。最后,系统使用训练好的模型来识别用户输入的信息,并以与查询案例相似的参考案例回复用户,并给出适用于查询案例的参考法律要点。