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A cost-sensitive decision tree approach for fraud detection

机译:一种成本敏感的决策树方法,用于欺诈检测

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摘要

With the developments in the information technology, fraud is spreading all over the world, resulting in huge financial losses. Though fraud prevention mechanisms such as CHIP&P1N are developed for credit card systems, these mechanisms do not prevent the most common fraud types such as fraudulent credit card usages over virtual POS (Point Of Sale) terminals or mail orders so called online credit card fraud. As a result, fraud detection becomes the essential tool and probably the best way to stop such fraud types. In this study, a new cost-sensitive decision tree approach which minimizes the sum of misclassification costs while selecting the splitting attribute at each non-terminal node is developed and the performance of this approach is compared with the well-known traditional classification models on a real world credit card data set. In this approach, misclassification costs are taken as varying. The results show that this cost-sensitive decision tree algorithm outperforms the existing well-known methods on the given problem set with respect to the well-known performance metrics such as accuracy and true positive rate, but also a newly defined cost-sensitive metric specific to credit card fraud detection domain. Accordingly, financial losses due to fraudulent transactions can be decreased more by the implementation of this approach in fraud detection systems.
机译:随着信息技术的发展,欺诈行为在世界范围内蔓延,造成巨大的财务损失。尽管针对信用卡系统开发了防欺诈机制(例如CHIP&P1N),但是这些机制并不能防止最常见的欺诈类型,例如虚拟POS(销售点)终端上的欺诈性信用卡使用或称为在线信用卡欺诈的邮件订单。结果,欺诈检测成为必不可少的工具,并且可能是阻止此类欺诈类型的最佳方法。在这项研究中,开发了一种新的成本敏感决策树方法,该方法在选择每个非终端节点的拆分属性时将错误分类成本的总和最小化,并且将该方法的性能与众所周知的传统分类模型进行了比较。现实世界的信用卡数据集。在这种方法中,误分类成本被认为是变化的。结果表明,就给定的问题集而言,这种成本敏感型决策树算法在准确度和真实阳性率等已知性能指标方面优于现有的已知方法,而且在特定情况下还重新定义了成本敏感型指标到信用卡欺诈检测域。因此,通过在欺诈检测系统中实施该方法,可以进一步减少由于欺诈交易引起的财务损失。

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