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Introducing a new method for the fusion of fraud evidence in banking transactions with regards to uncertainty

机译:引入一种新方法,用于融合银行交易中有关不确定性的欺诈证据

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Detection of fraudulent transactions is a vital factor for financial institutions, and finding more effective and accurate methods is of tremendous importance. The use of supervised data mining techniques is not feasible in many cases due to the lack of access to labeled data. Fraud detection is a complex task, and unsupervised methods like clustering and outlier detection techniques employed alone do not yield satisfactory results. Another issue is epistemic uncertainty due to the absence of sufficient information on the behavioral aspects of different customers, which also leads to poorer results for fraud detection and makes the fraud detection system inapplicable in real world environment. In this paper, using multi criteria decision method, intuitionistic fuzzy set, and evidential reasoning, a new method for detection of fraud was introduced, which infuses several behavioral evidence of a transaction concerning the effect of uncertainty for them. Transactional behavior was modeled by considering the trends of different main and aggregated variables at different periods and the extent of deviation of the new arrived transaction from each of these trends were considered as behavioral evidence. The final belief, which is the result of the combination of much evidence using the proposed method, will determine the originality of a newly arrived transaction. Finally, using a real world dataset, the results of the new method were compared with the results of Dempster-Shafer method in terms of the number of frauds discovered and the number of erroneous alerts they issued. The findings showed that the method introduced in this study has higher accuracy and lower false alarms compared to Dempster-Shafer method while the computational complexity of this method makes its implementation time longer. (C) 2018 Published by Elsevier Ltd.
机译:对于金融机构而言,发现欺诈性交易是至关重要的因素,因此,找到更有效,更准确的方法至关重要。由于缺乏对标记数据的访问,在许多情况下使用监督数据挖掘技术是不可行的。欺诈检测是一项复杂的任务,单独使用的无监督方法(例如聚类和离群值检测技术)无法产生令人满意的结果。另一个问题是由于缺乏有关不同客户行为方面的足够信息而造成的认知不确定性,这也导致欺诈检测的结果较差,并使欺诈检测系统不适用于现实环境。本文采用多准则决策方法,直觉模糊集和证据推理,提出了一种新的欺诈检测方法,为欺诈行为的不确定性提供了交易行为的若干证据。通过考虑不同时期不同主要变量和集合变量的趋势对交易行为进行建模,并将新到达的交易与每个趋势的偏离程度视为行为证据。最终的信念是使用提出的方法结合大量证据的结果,它将确定新到达的交易的创意。最后,使用现实世界的数据集,将新方法的结果与Dempster-Shafer方法的结果进行比较,以发现欺诈的数量和发出的错误警报的数量。结果表明,与Dempster-Shafer方法相比,本研究中引入的方法具有更高的准确性和更低的误报,而该方法的计算复杂性使其实现时间更长。 (C)2018由Elsevier Ltd.发布

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