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Modeling the random effects covariance matrix for generalized linear mixed models

机译:为广义线性混合模型建模随机效应协方差矩阵

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Generalized linear mixed models (GLMMs) are commonly used to analyze longitudinal categorical data. In these models, we typically assume that the random effects covariance matrix is constant across the subject and is restricted because of its high dimensionality and its positive definiteness. However, the covariance matrix may differ by measured covariates in many situations, and ignoring this heterogeneity can result in biased estimates of the fixed effects. In this paper, we propose a heterogenous random effects covariance matrix, which depends on covariates, obtained using the modified Cholesky decomposition. This decomposition results in parameters that can be easily modeled without concern that the resulting estimator will not be positive definite. The parameters have a sensible interpretation. We analyze metabolic syndrome data from a Korean Genomic Epidemiology Study using our proposed model.
机译:广义线性混合模型(GLMM)通常用于分析纵向分类数据。在这些模型中,我们通常假设随机效应协方差矩阵在整个对象中是恒定的,并且由于其高维和正定性而受到限制。但是,协方差矩阵在许多情况下可能因测量的协变量而不同,并且忽略此异质性可能导致固定效应的估计偏差。在本文中,我们提出了一个异质随机效应协方差矩阵,该矩阵依赖于使用改进的Cholesky分解获得的协变量。这种分解导致可以轻松建模的参数,而不必担心结果估计量不是正定的。参数有一个合理的解释。我们使用我们提出的模型分析了来自韩国基因组流行病学研究的代谢综合征数据。

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