不要忽视异化和边缘化:关联欺诈检测

Yilong Zang, Ruimin Hu, Zheng Wang, Danni Xu, Jia Wu, Dengshi Li, Junhang Wu, Lingfei Ren
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引用次数: 0

摘要

在线网络的匿名性使得打击欺诈的成本越来越高。由于图表示学习的优越性,基于图的欺诈检测近年来取得了重大进展。然而,升级欺诈策略会产生更高级和更困难的骗局。一种常见的策略是协同伪装——结合多种手段来欺骗他人。现有的研究方法主要研究个体欺诈行为的关系差异,而忽略了多关系欺诈行为之间的相关性。在本文中,我们设计了几个统计数据,通过探索多关系交互之间的相关性来验证欺诈者协同伪装的存在。从多元关系的角度看,欺诈行为具有异化和边缘化两个显著特征。基于这一发现,我们提出了一种基于关联感知的欺诈检测模型COFRAUD,该模型将协同伪装创新地融入到欺诈检测中。它捕获了多关系欺诈行为之间的相关性。在两个公共数据集上的实验结果表明,与最先进的方法相比,COFRAUD实现了显著的改进。
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Don't Ignore Alienation and Marginalization: Correlating Fraud Detection
The anonymity of online networks makes tackling fraud increasingly costly. Thanks to the superiority of graph representation learning, graph-based fraud detection has made significant progress in recent years. However, upgrading fraudulent strategies produces more advanced and difficult scams. One common strategy is synergistic camouflage —— combining multiple means to deceive others. Existing methods mostly investigate the differences between relations on individual frauds, that neglect the correlation among multi-relation fraudulent behaviors. In this paper, we design several statistics to validate the existence of synergistic camouflage of fraudsters by exploring the correlation among multi-relation interactions. From the perspective of multi-relation, we find two distinctive features of fraudulent behaviors, i.e., alienation and marginalization. Based on the finding, we propose COFRAUD, a correlation-aware fraud detection model, which innovatively incorporates synergistic camouflage into fraud detection. It captures the correlation among multi-relation fraudulent behaviors. Experimental results on two public datasets demonstrate that COFRAUD achieves significant improvements over state-of-the-art methods.
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