使用监督和无监督机器学习检测保险欺诈

IF 2.1 3区 经济学 Q2 BUSINESS, FINANCE
Jörn Debener, Volker Heinke, Johannes Kriebel
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引用次数: 4

摘要

欺诈是保险公司的一个重大问题,引起了人们对机器学习解决方案的极大兴趣。尽管用于保险欺诈检测的监督学习一直是一个研究热点,但在此背景下很少对无监督学习进行研究,并且仍然没有足够的证据来指导这些用于保险欺诈检测的机器学习分支之间的选择。因此,本研究使用专有保险索赔数据来评估监督学习和非监督学习。此外,我们与一家保险公司合作进行了实地实验,以调查每种方法在识别新的欺诈性索赔方面的性能。我们得出了几个重要的发现。无监督学习,特别是隔离森林,可以成功地检测保险欺诈。监督式学习也表现强劲,尽管很少有被贴上欺诈标签的案例。有趣的是,无监督学习和监督学习根据不同的输入信息检测新的欺诈性索赔。因此,为了实现,我们建议将监督和非监督方法理解为互补而不是替代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Detecting insurance fraud using supervised and unsupervised machine learning

Detecting insurance fraud using supervised and unsupervised machine learning

Fraud is a significant issue for insurance companies, generating much interest in machine learning solutions. Although supervised learning for insurance fraud detection has long been a research focus, unsupervised learning has rarely been studied in this context, and there remains insufficient evidence to guide the choice between these branches of machine learning for insurance fraud detection. Accordingly, this study evaluates supervised and unsupervised learning using proprietary insurance claim data. Furthermore, we conduct a field experiment in cooperation with an insurance company to investigate the performance of each approach in terms of identifying new fraudulent claims. We derive several important findings. Unsupervised learning, especially isolation forests, can successfully detect insurance fraud. Supervised learning also performs strongly, despite few labeled fraud cases. Interestingly, unsupervised and supervised learning detect new fraudulent claims based on different input information. Therefore, for implementation, we suggest understanding supervised and unsupervised methods as complements rather than substitutes.

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来源期刊
CiteScore
3.50
自引率
15.80%
发文量
43
期刊介绍: The Journal of Risk and Insurance (JRI) is the premier outlet for theoretical and empirical research on the topics of insurance economics and risk management. Research in the JRI informs practice, policy-making, and regulation in insurance markets as well as corporate and household risk management. JRI is the flagship journal for the American Risk and Insurance Association, and is currently indexed by the American Economic Association’s Economic Literature Index, RePEc, the Social Sciences Citation Index, and others. Issues of the Journal of Risk and Insurance, from volume one to volume 82 (2015), are available online through JSTOR . Recent issues of JRI are available through Wiley Online Library. In addition to the research areas of traditional strength for the JRI, the editorial team highlights below specific areas for special focus in the near term, due to their current relevance for the field.
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