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Modeling of the ARMA random effects covariance matrix in logistic random effects models

机译:Logistic随机效应模型中ARMA随机效应协方差矩阵的建模

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摘要

Logistic random effects models (LREMs) have been frequently used to analyze longitudinal binary data. When a random effects covariance matrix is used to make proper inferences on covariate effects, the random effects in the models account for both within-subject association and between-subject variation, but the covariance matix is difficult to estimate because it is high-dimensional and should be positive definite. To overcome these limitations, two Cholesky decomposition approaches were proposed for precision matrix and covariance matrix: modified Cholesky decomposition and moving average Cholesky decomposition, respectively. However, the two approaches may not work when there are non-trivial and complicated correlations of repeated outcomes. In this paper, we combined the two decomposition approaches to model the random effects covariance matrix in the LREMs, thereby capturing a wider class of sophisticated dependence structures while achieving parsimony in parametrization. We then used our proposed model to analyze lung cancer data.
机译:逻辑随机效应模型(LREM)已经常用于分析纵向二进制数据。当使用随机效应协方差矩阵对协变量效应进行适当推论时,模型中的随机效应既考虑了对象内部的关联,又考虑了对象之间的变化,但是协方差矩阵难以估计,因为它具有高维和应该是肯定的。为了克服这些限制,针对精度矩阵和协方差矩阵提出了两种Cholesky分解方法:分别是修正的Cholesky分解和移动平均Cholesky分解。但是,当重复结果存在非平凡和复杂的相关性时,这两种方法可能不起作用。在本文中,我们结合了两种分解方法,对LREM中的随机效应协方差矩阵进行建模,从而在实现参数化的简约性的同时捕获了更广泛的复杂依赖性结构。然后,我们使用我们提出的模型来分析肺癌数据。

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