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Marginal zero-inflated regression models for count data

机译:计数数据的边际零膨胀回归模型

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Data sets with excess zeroes are frequently analyzed in many disciplines. A common framework used to analyze such data is the zero-inflated (ZI) regression model. It mixes a degenerate distribution with point mass at zero with a non-degenerate distribution. The estimates from ZI models quantify the effects of covariates on the means of latent random variables, which are often not the quantities of primary interest. Recently, marginal zero-inflated Poisson (MZIP; Long etal. [A marginalized zero-inflated Poisson regression model with overall exposure effects. Stat. Med. 33 (2014), pp.5151-5165]) and negative binomial (MZINB; Preisser et al., 2016) models have been introduced that model the mean response directly. These models yield covariate effects that have simple interpretations that are, for many applications, more appealing than those available from ZI regression. This paper outlines a general framework for marginal zero-inflated models where the latent distribution is a member of the exponential dispersion family, focusing on common distributions for count data. In particular, our discussion includes the marginal zero-inflated binomial (MZIB) model, which has not been discussed previously. The details of maximum likelihood estimation via the EM algorithm are presented and the properties of the estimators as well as Wald and likelihood ratio-based inference are examined via simulation. Two examples presented illustrate the advantages of MZIP, MZINB, and MZIB models for practical data analysis.
机译:带有过多零的数据集在许多学科中经常被分析。用于分析此类数据的常见框架是零膨胀(ZI)回归模型。它将点质量为零的简并分布与非简并分布混合在一起。 ZI模型的估计值量化了协变量对潜在随机变量均值的影响,这些随机变量通常不是主要关注的数量。最近,边际零膨胀泊松(MZIP; Long等人。[具有总体暴露效应的边际零膨胀泊松回归模型。Stat。Med。33(2014),第5151-5165页])和负二项式(MZINB; Preisser等人,2016)已经引入了直接对均值响应进行建模的模型。这些模型产生的协变量效应具有简单的解释,对于许多应用而言,它们比从ZI回归中获得的更具吸引力。本文概述了边际零膨胀模型的一般框架,其中潜在分布是指数弥散族的成员,着重于计数数据的常见分布。特别是,我们的讨论包括边际零膨胀二项式(MZIB)模型,该模型以前没有讨论过。给出了通过EM算法进行最大似然估计的细节,并通过仿真检查了估计器的属性以及Wald和基于似然比的推断。给出的两个示例说明了MZIP,MZINB和MZIB模型在实际数据分析中的优势。

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