基于主成分分析的欺诈分类

P. Brockett, R. Derrig, L. Golden, A. Levine, M. Alpert
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引用次数: 183

摘要

本文向统计和保险文献介绍了一种数学技术,用于在没有训练样本存在的情况下对对象进行先验分类,而该训练样本的确切正确的群体隶属关系是已知的。本文还提供了该方法在汽车保险人身伤害索赔欺诈检测中的实证应用实例。使用这种技术,即RIDIT分数的主成分分析(PRIDIT),保险欺诈检测器可以减少不确定性,并增加针对适当索赔的机会,以便组织更有可能有效地分配调查资源来发现保险欺诈。此外,其他(外生)经验模型可以相对于pridit衍生的权重进行验证,以实现欺诈/非欺诈索赔和/或分析的最佳排名。该技术立即给出了单个欺诈指标变量价值的度量和整个索赔文件的单个索赔文件怀疑程度的度量,可用于明智地指导进一步的欺诈调查资源。此外,这项技术比使用人类保险调查员或保险理算员的成本更低,但结果相似。更一般地说,这种技术适用于其他经常遇到的管理环境,在这些环境中,大量的分配决策是基于主观的“线索”做出的,这些“线索”可能随着时间的推移而发生巨大变化。本文详细探讨了这些技术在汽车人身伤害保险索赔中的应用。
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Fraud Classification Using Principal Component Analysis of Ridits
This article introduces to the statistical and insurance literature a mathematical technique for an a priori classification of objects when no training sample exists for which the exact correct group membership is known. The article also provides an example of the empirical application of the methodology to fraud detection for bodily injury claims in automobile insurance. With this technique, principal component analysis of RIDIT scores (PRIDIT), an insurance fraud detector can reduce uncertainty and increase the chances of targeting the appropriate claims so that an organization will be more likely to allocate investigative resources efficiently to uncover insurance fraud. In addition, other (exogenous) empirical models can be validated relative to the PRIDIT-derived weights for optimal ranking of fraud/nonfraud claims and/or profiling. The technique at once gives measures of the individual fraud indicator variables' worth and a measure of individual claim file suspicion level for the entire claim file that can be used to cogently direct further fraud investigation resources. Moreover, the technique does so at a lower cost than utilizing human insurance investigators, or insurance adjusters, but with similar outcomes. More generally, this technique is applicable to other commonly encountered managerial settings in which a large number of assignment decisions are made subjectively based on "clues," which may change dramatically over time. This article explores the application of these techniques to injury insurance claims for automobile bodily injury in detail.
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