聚类相关数据广义线性混合效应模型的双组分混合

D. Hall, Lihua Wang
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引用次数: 30

摘要

提出了广义线性混合效应模型的有限混合模型来处理集群内相关性和异质性(亚种群)同时存在的情况。对于这类模型,我们考虑最大似然(ML)作为我们的主要估计方法。由于该模型的边际对数似然比较复杂,为了便于计算,采用了EM算法。这个过程的主要障碍是对随机效应的分布进行积分,以评估E步中的期望。当假设正态分布随机效应时,我们考虑自适应高斯正交来进行数值积分。我们还讨论了随机效应正态性假设松弛下的非参数ML估计。通过对两个实际数据集的分析,将我们提出的模型与其他现有模型进行了比较,并说明了我们的估计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-component mixtures of generalized linear mixed effects models for cluster correlated data
Finite mixtures of generalized linear mixed effect models are presented to handle situations where within-cluster correlation and heterogeneity (subpopulations) exist simultaneously. For this class of model, we consider maximum likelihood (ML) as our main approach to estimation. Owing to the complexity of the marginal loglikelihood of this model, the EM algorithm is employed to facilitate computation. The major obstacle in this procedure is to integrate over the random effects’ distribution to evaluate the expectation in the E step. When assuming normally distributed random effects, we consider adaptive Gaussian quadrature to perform this integration numerically. We also discuss nonparametric ML estimation under a relaxation of the normality assumption on the random effects. Two real data sets are analysed to compare our proposed model with other existing models and illustrate our estimation methods.
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