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A Supervised Learning Process to Elicit Fraud Cases in Online Auction Sites

机译:在网上拍卖网站中引诱欺诈案件的有监督学习过程

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摘要

Fraud is a recurring phenomenon at online actions sites like eBay. The enormous amount of transaction data public ally available offers a good opportunity for fraud prevention based on learning methods. However, online auction sites usually neither confirm nor deny fraudulent behavior: they simply suspend seller accounts and publicize feedback information supplied by buyers. While some cases receive media attention, most of them are hidden in the site's database. This limits the possibility of developing and testing new learning methods for fraud prevention, due to the scarcity of fraud samples. In order to overcome this limitation, we designed a system based on supervised learning to recognize in the textual comments left by buyers some common statements regarding seller behavior. Combining the type and frequency of those statements with other public ally available data, we can build a set of sellers who can arguably be considered fraudsters. We implemented a prototype of the system and evaluated it using data extracted from a major online auction site.
机译:欺诈行为在eBay等在线行动网站上屡屡发生。公开可用的大量交易数据为基于学习方法的欺诈预防提供了很好的机会。但是,在线拍卖网站通常既不确认也不否认欺诈行为:它们只是暂停卖方帐户并公开买方提供的反馈信息。尽管有些案例受到了媒体的关注,但大多数案例都隐藏在站点的数据库中。由于欺诈样本的稀缺性,这限制了开发和测试新的预防欺诈学习方法的可能性。为了克服此限制,我们设计了一种基于监督学习的系统,以在买方留下的文本评论中识别出一些有关卖方行为的常见陈述。将这些陈述的类型和频率与其他可公开获得的数据结合起来,我们可以建立一组可以被视为欺诈者的卖方。我们实施了该系统的原型,并使用从主要在线拍卖网站提取的数据对其进行了评估。

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