The literature on fraud analytics and fraud detection has seen a substantial increase in output in the past decade. This has led to a wide range of research topics and overall little organization of the many aspects of fraud analytical research. The focus of academics ranges from identifying fraudulent credit card payments to spotting illegitimate insurance claims. In addition, there is a wide range of methods and research objectives. This paper aims to provide an overview of fraud analytics in research and aims to more narrowly organize the discipline and its many subfields. We analyze a sample of almost 300 records on fraud analytics published between 2011 and 2020. In a systematic way, we identify the most prominent domains of application, challenges faced, performance metrics, and methods used. In addition, we build a framework for fraud analytical methods and propose a keywording strategy for future research. One of the key challenges in fraud analytics is access to public datasets. To further aid the community, we provide eight requirements for suitable data sets in research motivated by our research. We structure our sample of the literature in an online database. The database is available online for fellow researchers to investigate and potentially build upon.
翻译:过去十年来,关于欺诈分析和欺诈检测的文献产出大幅增加,这导致了一系列广泛的研究课题,对欺诈分析研究的许多方面组织得很少。学术界的侧重点从识别欺诈性信用卡支付到发现非法保险索赔,还有多种方法和研究目标。本文旨在概述研究中的欺诈分析,目的是更狭义地组织学科及其许多子领域。我们分析了2011年至2020年期间发表的近300份欺诈分析记录样本。我们系统地确定了应用、面临的挑战、业绩衡量尺度和所用方法的最突出领域。此外,我们建立了一个欺诈分析方法框架,并为未来研究提出了关键词战略。欺诈分析的关键挑战之一是获取公共数据集。为了进一步帮助社区,我们提出了八项关于由我们研究驱动的研究中适当数据集的要求。我们把文献样本编成一个在线数据库,供其他研究人员在线调查并潜在发展。