欺诈vis:理解无监督欺诈检测算法

Jiao Sun, Qixin Zhu, Zhifei Liu, Xin Liu, Jihae Lee, Zhigang Su, Lei Shi, Ling Huang, W. Xu
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引用次数: 8

摘要

发现欺诈用户行为对于保持在线网站的健康至关重要。欺诈者通常表现出分组行为,研究人员已经有效地利用这种行为来设计无监督算法来检测欺诈用户组。在这项工作中,我们提出了一个可视化系统,FraudVis,从时间、组内相关性、组间相关性、特征选择和个人用户角度对无监督欺诈检测算法进行可视化分析。FraudVis帮助领域专家更好地理解算法输出和检测到的欺诈行为。同时,FraudVis还可以帮助算法专家通过视觉对比对算法设计进行微调。通过使用可视化系统,我们解决了两个真实世界的欺诈检测案例,一个针对社交视频网站,另一个针对电子商务网站。两种情况下的结果都证明了FraudVis在理解无监督欺诈检测算法方面的有效性。
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FraudVis: Understanding Unsupervised Fraud Detection Algorithms
Discovering fraud user behaviors is vital to keeping online websites healthy. Fraudsters usually exhibit grouping behaviors, and researchers have effectively leveraged this behavior to design unsupervised algorithms to detect fraud user groups. In this work, we propose a visualization system, FraudVis, to visually analyze the unsupervised fraud detection algorithms from temporal, intra-group correlation, inter-group correlation, feature selection, and the individual user perspectives. FraudVis helps domain experts better understand the algorithm output and the detected fraud behaviors. Meanwhile, FraudVis also helps algorithm experts to fine-tune the algorithm design through the visual comparison. By using the visualization system, we solve two real-world cases of fraud detection, one for a social video website and another for an e-commerce website. The results on both cases demonstrate the effectiveness of FraudVis in understanding unsupervised fraud detection algorithms.
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