As the world is rapidly moving towards digitization and money transactions are becoming cashless, the use of credit cards has rapidly increased. The fraud activities associated with it have also been increasing which leads to a huge loss to the financial institutions. Therefore, we need to analyze and detect the fraudulent transaction from the non-fraudulent ones. In this paper, we present a comprehensive review of various methods used to detect credit card fraud. These methodologies include Hidden Markov Model, Decision Trees, Logistic Regression, Support Vector Machines (SVM), Genetic algorithm, Neural Networks, Random Forests, Bayesian Belief Network. A comprehensive analysis of various techniques is presented. We conclude the paper with the pros and cons of the same as stated in the respective papers.
翻译:由于世界正在迅速走向数字化,货币交易正在变得无现金,信用卡的使用迅速增加,与之有关的欺诈活动也不断增加,导致金融机构遭受巨大损失。因此,我们需要分析和发现非欺诈性交易的欺诈性交易。在本文件中,我们全面审查了用于侦查信用卡欺诈的各种方法。这些方法包括隐形马尔科夫模型、决定树、后勤倒退、支助病媒机器、遗传算法、神经网络、随机森林、巴伊西亚信仰网络。对各种技术进行了全面分析。我们用相关文件所述的利弊来完成文件。