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Bayesian Cholesky factor models in random effects covariance matrix for generalized linear mixed models

机译:广义线性混合模型随机效应协方差矩阵中的贝叶斯Cholesky因子模型

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摘要

Random effects in generalized linear mixed models (GLMM) are used to explain the serial correlation of the longitudinal categorical data. Because the covariance matrix is high dimensional and should be positive definite, its structure is assumed to be constant over subjects and to be restricted such as AR(1) structure. However, these assumptions are too strong and can result in biased estimates of the fixed effects. In this paper we propose a Bayesian modeling for the GLMM with regression models for parameters of the random effects covariance matrix using a moving average Cholesky decomposition which factors the covariance matrix into moving average (MA) parameters and IVs. We analyze lung cancer data using our proposed model.
机译:广义线性混合模型(GLMM)中的随机效应用于解释纵向分类数据的序列相关性。因为协方差矩阵是高维的,并且应该是正定的,所以假设其结构在主题上是恒定的,并且受到限制,例如AR(1)结构。但是,这些假设过于强大,可能导致固定效应的估计偏差。在本文中,我们提出了GLMM的贝叶斯模型,其中使用移动平均Cholesky分解将随机影响协方差矩阵的参数回归模型,该协方差矩阵将协方差矩阵分解为移动平均(MA)参数和IV。我们使用我们提出的模型分析肺癌数据。

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