Iddi Samuel, Molenberghs Geert, Aregay Mehreteab, Kalema George
Department of Statistics, University of Ghana, Legon-Accra, Ghana; I-BioStat, KU Leuven - University of Leuven.
Pharm Stat. 2014 Sep-Oct;13(5):316-26. doi: 10.1002/pst.1635. Epub 2014 Sep 2.
An extension of the generalized linear mixed model was constructed to simultaneously accommodate overdispersion and hierarchies present in longitudinal or clustered data. This so-called combined model includes conjugate random effects at observation level for overdispersion and normal random effects at subject level to handle correlation, respectively. A variety of data types can be handled in this way, using different members of the exponential family. Both maximum likelihood and Bayesian estimation for covariate effects and variance components were proposed. The focus of this paper is the development of an estimation procedure for the two sets of random effects. These are necessary when making predictions for future responses or their associated probabilities. Such (empirical) Bayes estimates will also be helpful in model diagnosis, both when checking the fit of the model as well as when investigating outlying observations. The proposed procedure is applied to three datasets of different outcome types.
构建了广义线性混合模型的扩展模型,以同时适应纵向或聚类数据中存在的过度离散和层次结构。这个所谓的组合模型分别在观测水平包含共轭随机效应以处理过度离散,在个体水平包含正态随机效应以处理相关性。通过使用指数族的不同成员,可以以这种方式处理各种数据类型。提出了协变量效应和方差分量的最大似然估计和贝叶斯估计。本文的重点是开发两组随机效应的估计程序。在对未来反应或其相关概率进行预测时,这些是必要的。这种(经验)贝叶斯估计在模型诊断中也将是有帮助的,无论是在检查模型拟合时还是在调查异常观测时。所提出的程序应用于三个不同结果类型的数据集。