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A Novel Cardholder Behavior Model for Detecting Credit Card Fraud

机译:检测信用卡欺诈的新型持卡人行为模型

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摘要

Because credit card fraud costs the banking sector billions of dollars every year, decreasing the losses incurred from credit card fraud is an important driver for the sector and end-users. In this paper, we focus on analyzing cardholder spending behavior and propose a novel cardholder behavior model for detecting credit card fraud. The model is called the Cardholder Behavior Model (CBM). Two focus points are proposed and evaluated for CBMs. The first focus point is building the behavior model using single-card transactions versus multi-card transactions. As the second focus point, we introduce holiday seasons as spending periods that are different from the rest of the year. The CBM is fine-tuned by using a real credit card transaction data-set from a leading bank in Turkey, and the credit card fraud detection accuracy is evaluated with respect to the abovementioned two focus points.
机译:由于信用卡欺诈每年给银行业造成数十亿美元的损失,因此减少信用卡欺诈所造成的损失是该部门和最终用户的重要推动力。在本文中,我们重点分析持卡人的消费行为,并提出了一种新颖的持卡人行为模型来检测信用卡欺诈。该模型称为持卡人行为模型(CBM)。提出并评估了煤层气的两个重点。第一个重点是使用单卡交易与多卡交易建立行为模型。作为第二个重点,我们将假期作为与其他年份不同的消费期进行介绍。通过使用来自土耳其一家领先银行的真实信用卡交易数据集对CBM进行微调,并针对上述两个重点评估了信用卡欺诈检测的准确性。

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