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CAFD: Detecting Collusive Frauds in Online Auction Networks by Combining One-Class Classification and Collective Classification

机译:CAFD:结合一类分类和集体分类来检测在线拍卖网络中的共谋欺诈

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摘要

Online auctions have become very popular over the last few years. This popularity is evidenced by the explosive growth of online auction sites with millions of users buying and selling goods from all over the world. However, this rapid growth of online auctions has also led to a corresponding increase in online frauds. While collusive auction frauds are not as common as other types of online frauds, they are more dangerous because they are more difficult to detect and often result in larger financial losses. In recent years, a number of techniques have been proposed to detect collusive frauds in online auction networks. While all the techniques have shown promising results, they often suffer from slow convergence or low detection performance. In this paper, we address these shortcomings by presenting CAFD, a novel anomaly detection technique that combines one-class classification and collective classification to detect collusive auction frauds. CAFD uses a one-class classifier to calculate an anomaly score for each unla-beled user. It also models the auction interactions between different users as a pairwise Markov random field (MRF) and applies belief propagation to the MRF to revise those anomaly scores. The results of our experiments show that CAFD is able to detect different types of collusive auction frauds with a low false positive rate and a reasonable detection time.
机译:在过去的几年中,在线拍卖变得非常流行。在线拍卖网站的爆炸性增长证明了这种受欢迎程度,在线拍卖站点的爆炸式增长吸引了来自世界各地的数百万用户买卖商品。但是,在线拍卖的快速增长也导致在线欺诈的相应增加。尽管串谋式拍卖欺诈不如其他类型的在线欺诈常见,但它们更危险,因为它们更难以发现,并经常导致更大的财务损失。近年来,已经提出了许多技术来检测在线拍卖网络中的共谋欺诈。尽管所有技术都显示出令人鼓舞的结果,但它们经常会出现收敛缓慢或检测性能低下的问题。在本文中,我们通过介绍CAFD(一种将一类分类和集体分类相结合来检测共谋拍卖欺诈的新颖异常检测技术)来解决这些缺点。 CAFD使用一类分类器来计算每个不满意用户的异常分数。它还将不同用户之间的拍卖交互建模为成对的马尔可夫随机场(MRF),并将信念传播应用于MRF以修改那些异常分数。我们的实验结果表明,CAFD能够以较低的误报率和合理的检测时间来检测不同类型的共谋拍卖欺诈。

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