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Analysis of fraudulent behavior strategies in online auctions for detecting latent fraudsters

机译:分析在线拍卖中欺诈行为策略以发现潜在欺诈者

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摘要

Online auction fraudsters constantly monitor the contextual situations of the auction and change their behavior strategies accordingly to distract the attention of their targets. This flipping of behavior makes it difficult to identify fraudsters. Thus, legitimate traders need appropriate countermeasures to avoid becoming victimized. To help online auction users detect fraudsters as early as possible, this study develops a systematic method to discover the fraudulent strategies from proven cases of online auction fraud. First, according to the results of cluster analysis on the proven fraudsters, four typical types of fraud are identified, which are Aggressive, Classical, Luxury and Low-profiled. To provide better insight, a strategy is further represented by a series of status transitions. Hidden statuses of latent fraudsters are discovered by applying X-means clustering to the phased profiles of their transaction histories. As a result, various strategies can be extracted by such a systematic method and interesting characteristics are found in these strategies. For example, about 80% fraudsters in the Yahoo! Taiwan auction site flip their behavior no more than two times, which is not as complicated as expected originally. Based on these discovered fraudulent statuses, a high-resolution fraud detection method is performed to classify suspects into legitimate users or fraudsters in different statuses, potentially improving overall detection accuracy. A two-way monitoring procedure is then proposed to successively examine the statuses of a suspicious account. Analysis shows that the two-way monitoring method is promising for better detection of well-camouflaged fraudsters. (C) 2013 Elsevier B. V. All rights reserved.
机译:在线拍卖欺诈者会不断监视拍卖的情境,并相应地更改其行为策略,以分散目标人群的注意力。行为的这种转变使得难以识别欺诈者。因此,合法交易者需要采取适当的对策以避免受害。为了帮助在线拍卖用户尽早发现欺诈者,本研究开发了一种系统的方法,可以从已证明的在线拍卖欺诈案例中发现欺诈策略。首先,根据对经过证明的欺诈者的聚类分析结果,确定了四种典型的欺诈类型,即攻击性,古典,豪华和低调。为了提供更好的洞察力,一系列状态转换进一步代表了一种策略。通过将X均值聚类应用于交易历史记录的分阶段配置文件,可以发现潜在欺诈者的隐藏状态。结果,可以通过这种系统的方法提取各种策略,并且在这些策略中发现有趣的特征。例如,Yahoo!中约80%的欺诈者台湾拍卖网站的行为不超过两次,这并不像最初预期的那么复杂。基于这些发现的欺诈状态,执行高分辨率的欺诈检测方法,将嫌疑人分类为处于不同状态的合法用户或欺诈者,从而有可能提高总体检测准确性。然后提出了一种双向监视程序,以连续检查可疑帐户的状态。分析表明,双向监视方法有望更好地检测伪装得当的欺诈者。 (C)2013 Elsevier B. V.保留所有权利。

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