GENERALIZED LINEAR-MODELS WITH RANDOM EFFECTS - A GIBBS SAMPLING APPROACH

被引:618
|
作者
ZEGER, SL
KARIM, MR
机构
关键词
BAYESIAN; CORRELATION; HETEROGENEITY; LOGISTIC REGRESSION; MONTE-CARLO; OVERDISPERSION; REGRESSION;
D O I
10.2307/2289717
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Generalized linear models have unified the approach to regression for a wide variety of discrete, continuous, and censored response variables that can be assumed to be independent across experimental units. In applications such as longitudinal studies, genetic studies of families, and survey sampling, observations may be obtained in clusters. Responses from the same cluster cannot be assumed to be independent. With linear models, correlation has been effectively modeled by assuming there are cluster-specific random effects that derive from an underlying mixing distribution. Extensions of generalized linear models to include random effects has, thus far, been hampered by the need for numerical integration to evaluate likelihoods. In this article, we cast the generalized linear random effects model in a Bayesian framework and use a Monte Carlo method, the Gibbs sampler, to overcome the current computational limitations. The resulting algorithm is flexible to easily accommodate changes in the number of random effects and in their assumed distribution when warranted. The methodology is illustrated through a simulation study and an analysis of infectious disease data.
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页码:79 / 86
页数:8
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