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ADAPTIVE FRAUD DETECTION BASED ON USER BEHAVIOR MINING

机译:基于用户行为挖掘的自适应欺诈检测

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In the faceless world of the Internet, online fraud is one of the greatest reasons of loss for web merchants. Advanced solutions are needed to protect e-businesses from the constant problems of fraud. Many popular fraud detection algorithms require supervised training, which needs human intervention to prepare training cases, Since it is quite often for an online transaction database to have Terabyte-level storage, human investigation to identify fraudulent transactions is very costly. This paper describes the automatic design of user profiling method for the purpose of fraud detection. We use a rule-learning algorithm to adaptively profile legitimate customer behavior in a transaction database. Then the incoming transactions are compared against the user profile to uncover the anomalies. The anomaly outputs are used as input to an accumulation system for combining evidence to generate high-confidence fraud alert value. Favorable experimental results are presented.
机译:在互联网这个面目全非的世界中,在线欺诈是造成网络商人流失的最大原因之一。需要先进的解决方案来保护电子商务免受欺诈的持续困扰。许多流行的欺诈检测算法都需要有监督的培训,这需要人工干预才能准备培训案例。由于在线事务数据库通常具有TB级的存储,因此进行人工调查以识别欺诈性交易非常昂贵。本文介绍了用于欺诈检测目的的用户配置文件方法的自动设计。我们使用规则学习算法来自适应地描述交易数据库中合法客户的行为。然后将传入的事务与用户配置文件进行比较以发现异常。异常输出用作累积系统的输入,该累积系统用于组合证据以生成高置信度欺诈警报值。提出了良好的实验结果。

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