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首页> 外文期刊>International journal of mathematics and mathematical sciences >Anomaly Detection in Health Insurance Claims Using Bayesian Quantile Regression
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Anomaly Detection in Health Insurance Claims Using Bayesian Quantile Regression

机译:使用Bayesian Standile回归的健康保险索赔中的异常检测

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Research has shown that current health expenditure in most countries, especially in sub-Saharan Africa, is inadequate and unsustainable. Yet, fraud, abuse, and waste in health insurance claims by service providers and subscribers threaten the delivery of quality healthcare. It is therefore imperative to analyze health insurance claim data to identify potentially suspicious claims. Typically, anomaly detection can be posited as a classification problem that requires the use of statistical methods such as mixture models and machine learning approaches to classify data points as either normal or anomalous. Additionally, health insurance claim data are mostly associated with problems of sparsity, heteroscedasticity, multicollinearity, and the presence of missing values. The analyses of such data are best addressed by adopting more robust statistical techniques. In this paper, we utilized the Bayesian quantile regression model to establish the relations between claim outcome of interest and subject-level features and further classify claims as either normal or anomalous. An estimated model component is assumed to inherently capture the behaviors of the response variable. A Bayesian mixture model, assuming a normal mixture of two components, is used to label claims as either normal or anomalous. The model was applied to health insurance data captured on 115 people suffering from various cardiovascular diseases across different states in the USA. Results show that 25 out of 115 claims (21.7%) were potentially suspicious. The overall accuracy of the fitted model was assessed to be 92%. Through the methodological approach and empirical application, we demonstrated that the Bayesian quantile regression is a viable model for anomaly detection.
机译:研究表明,当前大多数国家的健康支出,特别是在撒哈拉以南非洲,是不合适和不可持续的。然而,服务提供商和订户在健康保险索赔中的欺诈,虐待和浪费威胁到优质医疗保健。因此,分析健康保险索赔数据必须识别潜在可疑索赔。通常,异常检测可以被定位为需要使用统计方法的分类问题,例如混合模型和机器学习方法,以将数据点分类为正常或异常。此外,健康保险索赔数据大多与稀疏性,异素塑性,多元形性问题有关,以及缺失值的存在。通过采用更强大的统计技术,可以获得这些数据的分析。在本文中,我们利用了贝叶斯分位数回归模型来建立兴趣和主题特征的声明结果与主题特征之间的关系,并进一步将索赔进一步分类为正常或异常。假设估计的模型组件固有地捕获响应变量的行为。假设两种组分的正常混合物的贝叶斯混合物模型用于将权利要求标记为正常或异常。该模型适用于在美国患有美国不同州的各种心血管疾病的115人捕获的健康保险数据。结果表明,115名索赔中的25个(21.7%)可能是可疑的。拟合模型的总体准确性被评估为92%。通过方法论方法和经验应用,我们证明贝叶斯分位数回归是异常检测的可行模型。

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