人工智能在银行信用卡欺诈检测中的应用概念模型

Busisizwe Kelvin Nkomo, T. Breetzke
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引用次数: 2

摘要

信用卡在经济增长中发挥着重要作用,因为它使无现金社会成为可能,从而减少了政府在制造和发行纸币上的开支。无现金社会将使政府节省数十亿美元,这些钱可以重新投入到经济中用于其他目的。然而,实现无现金社会的媒介,如信用卡,正受到欺诈者的攻击。最近的研究表明,越来越多的钱被欺诈性地从账户中取出。本文旨在评估银行使用的信用卡欺诈检测方法以及实施这些方法的难点。该研究建议在信用卡欺诈检测方法中使用人工智能、地理定位和数据挖掘,以减轻当前信用卡欺诈检测方法的弱点。人工智能、数据挖掘和地理定位的使用将使信用卡欺诈检测方法能够分析和识别客户支出趋势,从而识别欺诈交易。引入了一个模型来帮助缓解这些弱点。我们进行了深入的文献综述,并在整个研究中使用了二手研究作为主要的信息来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A conceptual model for the use of artificial intelligence for credit card fraud detection in banks
Credit cards play a role in economic growth because they allow for a cashless society which in turn reduces government expenditure on the manufacturing and distribution of monetary notes. A cashless society would allow governments to save billions of money that can be ploughed back into the economy for other purposes. However, mediums of achieving a cashless society such as credit cards are under attack from fraudsters. Recent studies show that more and more money is being fraudulently withdrawn from accounts. This paper aims to evaluate the credit card fraud detection methods used by banks and the difficulties in implementing the said methods. The study suggests the use of artificial intelligence, geolocation and data mining in credit card fraud detection methods to mitigate the weaknesses that current credit card fraud detection methods have. The use of artificial intelligence, data mining and geolocation would enable credit card fraud detection methods to analyse and identify trends in customer spending to identify fraudulent transactions. A model is introduced to help mitigate the weaknesses. An indepth literature review was undertaken and secondary research was used throughout the study as the main source of information.
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