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Semi-supervised Classification of Fraud Data in Commercial Auctions

机译:商业拍卖中欺诈数据的半监督分类

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摘要

Given the magnitude of monetary transactions at auction sites, they are very attractive to fraudsters and scam artists. Shill bidding (SB) is a severe fraud in e-auctions, which occurs during the bidding period and is driven by modern-day technology and clever scammers. SB does not produce any obvious evidence, and it is often unnoticed by the victims. The lack of availability of training datasets for SB and the difficulty in identifying the behavior of sophisticated fraudsters hinder research on SB detection. To safeguard consumers from dishonest bidders, we were incentivized to investigate semi-supervised classification (SSC) for the first time, which is the most suitable approach to solving fraud classification problems. In this study, we first introduce two new SB patterns, and then based on a total of nine SB patterns, we build an SB dataset from commercial auctions and bidder history data. SSC requires the labeling of a few SB data samples, and to this end, we propose an anomaly detection method based on data clustering. We addressed the skewed class distribution with a hybrid data sampling method. Our experiments in training several SSC models show that using primarily unlabeled SB data with a few labeled SB data improves predictive performance when compared to that of supervised models.
机译:考虑到拍卖网站上的货币交易量巨大,它们对欺诈者和欺诈者非常有吸引力。竞标(SB)是电子竞标中的一种严重欺诈行为,它发生在竞标期间,并且受现代技术和聪明的骗子的推动。 SB没有提供任何明显的证据,而且受害者常常没有注意到它。缺乏针对SB的训练数据集,以及难以识别复杂欺诈者的行为,这阻碍了对SB检测的研究。为了保护消费者免遭不诚实的投标者的侵害,我们被鼓励首次调查半监督分类(SSC),这是解决欺诈分类问题的最合适方法。在本研究中,我们首先介绍两个新的SB模式,然后基于总共九个SB模式,从商业拍卖和投标人历史数据构建S​​B数据集。 SSC需要标记一些SB数据样本,为此,我们提出了一种基于数据聚类的异常检测方法。我们使用混合数据采样方法解决了偏斜的类分布问题。我们训练几个SSC模型的实验表明,与监督模型相比,主要使用未标记的SB数据和一些标记的SB数据可以提高预测性能。

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  • 来源
    《Applied Artificial Intelligence》 |2020年第4期|47-63|共17页
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  • 作者单位

    Univ Regina Comp Sci Dept 3737 Wascana Pkwy Regina SK S4S 0A2 Canada;

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