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Non nested model selection for spatial count regression models with application to health insurance

机译:空间计数回归模型的非嵌套模型选择及其在健康保险中的应用

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In this paper we consider spatial regression models for count data. We examine not only the Poisson distribution but also the generalized Poisson capable of modeling over-dispersion, the negative Binomial as well as the zero-inflated Poisson distribution which allows for excess zeros as possible response distribution. We add random spatial effects for modeling spatial dependency and develop and implement MCMC algorithms in R for Bayesian estimation. The corresponding R library ‘spatcounts’ is available on CRAN. In an application the presented models are used to analyze the number of benefits received per patient in a German private health insurance company. Since the deviance information criterion is only appropriate for exponential family models, we use in addition the Vuong and Clarke test with a Schwarz correction to compare possibly non nested models. We illustrate how they can be used in a Bayesian context.
机译:在本文中,我们考虑用于计数数据的空间回归模型。我们不仅检查了泊松分布,还检查了能够建模过度分散的广义泊松,负二项式以及零膨胀泊松分布,该泊松分布允许将多余的零作为可能的响应分布。我们添加了随机空间效应以对空间依赖性进行建模,并在R中开发和实现MCMC算法以进行贝叶斯估计。相应的R库“ spatcounts”在CRAN上可用。在一个应用程序中,所提供的模型用于分析德国一家私人健康保险公司为每位患者提供的福利数量。由于偏差信息准则仅适用于指数族模型,因此我们另外使用带有Schwarz校正的Vuong和Clarke检验来比较可能的非嵌套模型。我们说明了如何在贝叶斯上下文中使用它们。

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