Card payment fraud is a serious problem, and a roadblock for an optimally functioning digital economy, with cards (Debits and Credit) being the most popular digital payment method across the globe. Despite the occurrence of fraud could be relatively rare, the impact of fraud could be significant, especially on the cardholder. In the research, there have been many attempts to develop methods of detecting potentially fraudulent transactions based on data mining techniques, predominantly exploiting the developments in the space of machine learning over the last decade. This survey proposes a taxonomy based on a review of existing research attempts and experiments, which mainly elaborates the approaches taken by researchers to incorporate the (i) business impact of fraud (and fraud detection) into their work , (ii) the feature engineering techniques that focus on cardholder behavioural profiling to separate fraudulent activities happening with the same card, and (iii) the adaptive efforts taken to address the changing nature of fraud. Further, there will be a comparative performance evaluation of classification algorithms used and efforts of addressing class imbalance problem. Forty-five peer-reviewed papers published in the domain of card fraud detection between 2009 and 2020 were intensively reviewed to develop this paper.
翻译:信用卡支付欺诈是一个严重问题,是阻碍数字经济最佳运作的一个障碍,因为卡片(借记和信用)是全球最受欢迎的数字支付方法。尽管欺诈的发生相对较少,但欺诈的影响可能很大,特别是对持卡人的影响。在研究中,人们多次试图根据数据挖掘技术,主要利用过去十年中机器学习空间的发展,制定潜在欺诈性交易的侦查方法。这项调查建议基于对现有研究尝试和实验的审查进行分类,主要阐述研究人员为将(一) 欺诈(和欺诈探测)的商业影响纳入其工作所采取的方法。 (二) 侧重于持卡人行为特征的工程技术,以分别用同一张卡进行欺诈活动,以及(三) 为解决欺诈性质的变化所作的适应性努力。此外,还将对使用的分类算法和解决阶级不平衡问题的努力进行比较性业绩评价。2009年至2020年期间在查卡欺诈领域发表的45份同行审查文件正在深入审查,以编写这份文件。