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基于过程监督的序列多任务法律判决预测方法
引用本文:张春云,曲浩,崔超然,孙皓亮,尹义龙. 基于过程监督的序列多任务法律判决预测方法[J]. 计算机科学, 2021, 48(3): 227-232. DOI: 10.11896/jsjkx.200700056
作者姓名:张春云  曲浩  崔超然  孙皓亮  尹义龙
作者单位:山东财经大学计算机科学与技术学院 济南 250014;山东大学软件学院 济南 250101;山东财经大学计算机科学与技术学院 济南 250014;山东大学软件学院 济南 250101;山东大学软件学院 济南 250101
基金项目:国家自然科学基金项目;国家重点研发计划
摘    要:法律判决预测是人工智能技术在法律领域的应用,因此对法律判决预测方法的研究对于实现智慧司法具有重要的理论价值和实际意义.传统的法律判决预测方法大都是只进行单一任务的预测或仅基于参数共享的多任务预测,并未考虑各子任务之间的序列依存关系,因此预测性能难以得到进一步的提升.文中提出了一个端到端的基于过程监督的序列多任务法律判决...

关 键 词:法律判决预测  多任务学习  过程监督  深度学习

Process Supervision Based Sequence Multi-task Method for Legal Judgement Prediction
ZHANG Chun-yun,QU Hao,CUI Chao-ran,SUN Hao-liang,YIN Yi-long. Process Supervision Based Sequence Multi-task Method for Legal Judgement Prediction[J]. Computer Science, 2021, 48(3): 227-232. DOI: 10.11896/jsjkx.200700056
Authors:ZHANG Chun-yun  QU Hao  CUI Chao-ran  SUN Hao-liang  YIN Yi-long
Affiliation:(School of Computer Science and Technology,Shandong University of Finance and Economics,Jinan 250014,China;School of Software,Shandong University,Jinan 250101,China)
Abstract:Legal judgment prediction is an application of artificial intelligence technology in legal field.Hence,the research on the legal judgment prediction method has important theoretical value and practical significance for the realization of intelligent justice.Traditional legal judgment prediction methods only make single task prediction or just use multi-task prediction based on parameter sharing,without considering the sequence dependence among subtasks,so the prediction performance is difficult to be further improved.This paper proposes a process supervision based sequence multi-task framework(PS-SMTL)by encoding sequence dependency of subtasks in legal judgement.It is an end to end legal judgement prediction method without any external features.By introducing process supervision,the proposed model ensures the accuracy of the obtained dependent prior information from advance tasks.The proposed model is applied to CAIL2018 dataset and a good classification result is achieved.The average classification accuracy is 2%higher than that of the existing state-of-the-art method.
Keywords:Legal judgement prediction  Multi-task learning  Process supervision  Deep learning
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