电子商务的法律智能:利用多视角纠纷表示的多任务学习

Xin Zhou, Yating Zhang, Xiaozhong Liu, Changlong Sun, Luo Si
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引用次数: 17

摘要

各种电子商务平台每天产生数百万笔交易,交易纠纷也很多。这就产生了对电子商务交易中有效和高效的争议解决方案的需求。本文提出了一个新的研究课题——电子商务交易的法律纠纷判决预测,它将电子商务数据挖掘和法律智能两个孤立的领域联系起来。与传统的法律情报侧重于争议本身的文本证据不同,新的研究利用了卖方和买方过去的行为信息以及当前交易的文本证据等多视角信息。将多视角纠纷表示集成到一个创新的多任务学习框架中,用于预测法律结果。从世界领先的电子商务平台收集的大型争议案件数据集进行的大量实验表明,所提出的模型可以更准确地通过买方,卖方和交易观点来描述争议案件,以便针对几种替代方案进行法律判决预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Legal Intelligence for E-commerce: Multi-task Learning by Leveraging Multiview Dispute Representation
Various e-commerce platforms produce millions of transactions per day with many transaction disputes. This generates the demand for effective and efficient dispute resolutions for e-commerce transactions. This paper proposes a novel research task of Legal Dispute Judgment (LDJ) prediction for e-commerce transactions, which connects two yet isolated domains, e-commerce data mining and legal intelligence. Different from traditional legal intelligence with the focus on textual evidence of the dispute itself, the new research utilizes multiview information such as past behavior information of seller and buyer as well as textual evidence of the current transaction. The multiview dispute representation is integrated into an innovative multi-task learning framework for predicting the legal result. An extensive set of experiments with a large dispute case dataset collected from a world leading e-commerce platform shows that the proposed model can more accurately characterize a dispute case through buyer, seller, and transaction viewpoints for legal judgment prediction against several alternatives.
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