Detection of Health Insurance Fraud with Discrete Choice Model: Evidence from Medical Expense Insurance in China

Yi Yao, Qixiang Sun, Shan-Hui Lin
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引用次数: 1

Abstract

Health insurance fraud increases the inefficiency and inequality in our society. To address the widespread problem, cost effect techniques are in need to detect fraudulent claims. With a dataset from medical expense insurance in China, we propose a discrete choice model to identify predicting factors of fraudulent claims, and we address the major limitations of discrete choice model by considering over sampling of fraudulent cases, as well as mislabeling of legitimate claims (omission error). Our results show that a few factors, such as hospital’s qualification and policyholder’s renewal status, could be used to predict fraudulent claims for further investigation.
用离散选择模型检测医疗保险欺诈:来自中国医疗费用保险的证据
医疗保险欺诈增加了我们社会的低效率和不平等。为了解决这个普遍存在的问题,需要成本效益技术来检测欺诈性索赔。利用中国医疗费用保险数据集,我们提出了一个离散选择模型来识别欺诈性索赔的预测因素,并通过考虑欺诈性案例的过度抽样以及合法索赔的错误标记(遗漏错误)来解决离散选择模型的主要局限性。我们的研究结果表明,一些因素,如医院的资质和投保人的续保状态,可以用来预测欺诈性索赔,以便进一步调查。
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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