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How Artificial Intelligence and machine learning research impacts payment card fraud detection: A survey and industry benchmark

机译:人工智能和机器学习研究如何影响支付卡欺诈检测:一项调查和行业基准

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The core goal of this paper is to identify guidance on how the research community can better transition their research into payment card fraud detection towards a transformation away from the current unacceptable levels of payment card fraud. Payment card fraud is a serious and long-term threat to society (Ryman-Tubb and d’Avila Garcez, 2010) with an economic impact forecast to be $416bn in 2017 (see Appendix A). The proceeds of this fraud are known to finance terrorism, arms and drug crime. Until recently the patterns of fraud (fraud vectors) have slowly evolved and the criminalsmodus operandi(MO) has remained unsophisticated. Disruptive technologies such as smartphones, mobile payments, cloud computing and contactless payments have emerged almost simultaneously with large-scale data breaches. This has led to a growth in new fraud vectors, so that the existing methods for detection are becoming less effective. This in turn makes further research in this domain important. In this context, a timely survey of published methods for payment card fraud detection is presented with the focus on methods that use AI and machine learning. The purpose of the survey is to consistently benchmark payment card fraud detection methods for industry using transactional volumes in 2017. This benchmark will show that only eight methods have a practical performance to be deployed in industry despite the body of research. The key challenges in the application of artificial intelligence and machine learning to fraud detection are discerned. Future directions are discussed and it is suggested that a cognitive computing approach is a promising research direction while encouraging industry data philanthropy.
机译:本文的核心目标是确定有关研究团体如何更好地将其研究转移到支付卡欺诈检测方面的指导,以实现从目前不可接受的支付卡欺诈水平的转变。支付卡欺诈是对社会的严重和长期威胁(Ryman-Tubb和d'Avila Garcez,2010年),预计2017年的经济影响将达到4160亿美元(请参阅附录A)。众所周知,这种欺诈活动的收益可用于资助恐怖主义,武器和毒品犯罪。直到最近,欺诈的模式(欺诈媒介)才慢慢发展,犯罪分子的作案手法(MO)仍然不为人所知。智能手机,移动支付,云计算和非接触式支付等破坏性技术几乎与大规模数据泄露同时出现。这导致了新的欺诈媒介的增长,因此现有的检测方法变得不太有效。反过来,这使得对该领域的进一步研究变得重要。在这种情况下,我们将对已发布的支付卡欺诈检测方法进行及时调查,重点是使用AI和机器学习的方法。该调查的目的是在2017年使用交易量对行业的支付卡欺诈检测方法进行持续的基准测试。该基准测试表明,尽管有大量的研究,但只有八种方法可以在行业中实际应用。可以看出人工智能和机器学习在欺诈检测中的主要挑战。讨论了未来的方向,并建议认知计算方法是鼓励工业数据慈善事业的有前途的研究方向。

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