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Poisson regression and Zero-inflated Poisson regression: application to private health insurance data

机译:泊松回归和零膨胀泊松回归:应用于私人健康保险数据

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摘要

Modeling event counts is important in many fields. For this purpose, the Poisson regression model is often used. However, this model assumes the equidispersion of the data. Unfortunately, this assumption is often violated in the observed data. The source of overdispersion depends on many situations. When the source of overdispersion is the excess of zeroes, the Zero-inflated Poisson regression model fits better counts data. In this paper, we first review the theoretical framework of Poisson regression and Zero-inflated Poisson regression. The probability integral transform test and the Vuong’s test are used to compare between the two models. Second, we fit these models to the number of claims in a private health insurance scheme. In our case, the number of claims is overdispersed because of the preponderance of zeroes in the data set. The results prove that Zero-inflated Poisson regression performs better the number of claims of the customers affiliated in the health insurance scheme in the Moroccan case.
机译:在许多领域中,对事件计数进行建模很重要。为此,通常使用泊松回归模型。但是,此模型假定数据是均匀分散的。不幸的是,这一假设在观察到的数据中经常被违反。过度分散的根源取决于许多情况。当过度分散的来源为零以上时,零膨胀泊松回归模型将拟合更好的计数数据。在本文中,我们首先回顾一下泊松回归和零膨胀泊松回归的理论框架。概率积分变换检验和Vuong检验用于比较两个模型。其次,我们将这些模型与私人健康保险计划中的理赔数量相匹配。在我们的案例中,由于数据集中的零占优势,因此索赔的数量过于分散。结果证明,在摩洛哥案例中,零膨胀的Poisson回归可以更好地处理隶属于健康保险计划的客户的理赔数量。

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