Using Benfords Law To Detect Fraud In The Insurance Industry

M. Maher, Michael D. Akers
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引用次数: 13

Abstract

Benford's Law is the mathematical phenomena that states that the first digits or left most digits in a list of numbers will occur with an expected logarithmic frequency. While this method has been used in industries such as oil and gas and manufacturing to identify fraudulent activity, it has not been applied to the health insurance industry. Since health insurance companies process a large number of claims each year and these claims are susceptible to fraud, the use of this method in this industry is appropriate. This paper examines the application of Benford's Law to four health insurance companies located in the Midwest. For each company, analysis was performed on the first digit distribution, the first two-digit distribution, and providers with high volumes of claims. The results show that the populations are similar to the frequencies predicted by Benfords Law. The findings also suggested possible fraudulent activity by specific providers, however, the com-panies determined that these results occurred due to abnormal billing practices and were not frau-dulent. The insurance companies that participated in this study will continue to use this method to further detect fraudulent claims.
运用本福德法检测保险业欺诈
本福德定律是一种数学现象,它指出数字列表中的第一个数字或最左边的数字将以预期的对数频率出现。虽然这种方法已在石油和天然气以及制造业等行业用于识别欺诈活动,但尚未应用于健康保险行业。由于健康保险公司每年处理大量索赔,这些索赔容易发生欺诈,因此在该行业使用这种方法是适当的。本文考察了本福德定律在中西部四家健康保险公司中的应用。对于每个公司,对第一位数分布、前两位数分布和索赔量大的供应商进行了分析。结果表明,种群与本福德定律预测的频率相似。调查结果还表明,某些供应商可能存在欺诈行为,然而,这些公司确定,这些结果是由于异常的计费操作造成的,并非欺诈。参与本研究的保险公司将继续使用这种方法来进一步检测欺诈性索赔。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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