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Automated Design of User Profiling Systems for Fraud Detection

机译:用于欺诈检测的用户分析系统的自动设计

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One method for detecting fraud is to check for suspicious changes in user behavior over time. This paper describes the automatic design of user profiling methods for the purpose of fraud detection, using a series of data mining and machine learning techniques. It uses a rule-learning program to uncover indicators of fraudulent behavior from a large database customer transactions. Then the indicators are used to create a set of monitors, which profile legitimate customer behavior and indicate anomalies. Finally, the outputs of the monitors are used as features in a system that learns to combine evidence to generate high-confidence alarms. The system has been applied to the problem of detecting cellular cloning, but is applicable to a more general class of fraud called superimposition fraud. Experiments indicate that this automatic approach performs better than hand-crafted methods for detecting fraud. Furthermore, this approach can adapt to the changing conditions typical of fraud detection environments.
机译:一种检测欺诈的方法是检查用户行为随时间的可疑变化。本文介绍了用于欺诈检测目的的用户分析方法的自动设计,使用一系列数据挖掘和机器学习技术。它使用规则学习程序从大型数据库客户交易中揭示欺诈行为的指标。然后,指标用于创建一组监视器,该监视器是合法的客户行为并指示异常。最后,监视器的输出用作系统中的特征,该功能学习将证据结合起来产生高置信警报。该系统已经应用于检测蜂窝克隆的问题,但适用于更普遍的欺诈涉及叠加欺诈。实验表明,这种自动方法比用于检测欺诈的手工制作方法更好。此外,这种方法可以适应典型的欺诈检测环境的变化条件。

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