An early fraud detection mechanism for online auctions based on phased modeling

Jau-Shien Chang, Wen-Hsi Chang
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引用次数: 8

Abstract

Reputation systems provided by online auction sites are the only countermeasure available for buyers to evaluate a seller's credit. Unfortunately, feedback score mechanisms are too easily manipulated creating falsely overrated reputations. Therefore, developing an effective fraud detection method can assist the user in identifying cases of fraud. However, none of existing research addresses the most important issue of early fraud detection, which is, discovering a fraudster before he defrauds. For effective early fraud detection for online auctions, this paper proposes a novel phased detection framework to identify a potential fraudster as early as possible. To heighten precision in detection, different quantifiable behavioral features were extracted and integrated with regression model trees to build phased fraud behavior models. To demonstrate the effectiveness of the proposed method, real transaction data were collected from Taiwan's Yahoo!Kimo for training and testing. The experimental results with these models show that the recall rate of fraud detection is over 82%.
一种基于阶段建模的在线拍卖早期欺诈检测机制
在线拍卖网站提供的信誉系统是买家评估卖家信用的唯一对策。不幸的是,反馈评分机制很容易被操纵,从而造成错误的高估声誉。因此,开发一种有效的欺诈检测方法可以帮助用户识别欺诈案件。然而,现有的研究都没有解决早期欺诈检测的最重要问题,即在欺诈者欺诈之前发现欺诈者。为了对在线拍卖进行有效的早期欺诈检测,本文提出了一种新的阶段性检测框架,以尽早识别潜在的欺诈者。为了提高检测精度,提取不同的可量化行为特征,并将其与回归模型树相结合,构建阶段性欺诈行为模型。为了验证所提方法的有效性,我们以台湾Yahoo!Kimo用于培训和测试。使用这些模型进行的实验结果表明,欺诈检测的召回率超过82%。
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