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A class of multivariate discrete distributions based on an approximate density in GLMM

机译:基于GLMM中的近似密度的一类多元离散分布

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摘要

It is well known that the generalized linear mixed model is useful for analyzing the overdispersion and correlation structure for multivariate discrete data. In this paper, we derive an approximation of the density function for the generalized linear mixed model. This approximation is found to satisfy the properties of probability density function under some conditions. Therefore, this approximation can be regarded as a class of multivariate distributions. Estimation of the parameters in this class can be carried out by the maximum likelihood method. We give the likelihood ratio criteria for testing several covariance structures. Several simulation studies were also conducted for the Poisson log-normal model when the proposed density function is regarded as an approximate likelihood of the generalized linear mixed model.
机译:众所周知,广义线性混合模型可用于分析多元离散数据的过度分散和相关结构。在本文中,我们导出了广义线性混合模型的密度函数的近似值。发现该近似值在某些条件下满足概率密度函数的性质。因此,这种近似可以被视为一类多元分布。此类中的参数估计可以通过最大似然法进行。我们给出了似然比标准来测试几种协方差结构。当建议的密度函数被视为广义线性混合模型的近似似然时,还对泊松对数正态模型进行了一些仿真研究。

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