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Testing for generalized linear mixed models with cluster correlated data under linear inequality constraints
Authors:Karelyn A Davis  Chul G Park  Sanjoy K Sinha
Institution:1. Environmental Health Science and Research Bureau, Health Canada, Ottawa, Ontario, Canada K1A 0K9;2. School of Mathematics and Statistics, Carleton University, Ottawa, Ontario, Canada K1S 5B6
Abstract:Generalized linear mixed models (GLMMs) are often used for analyzing cluster correlated data, including longitudinal data and repeated measurements. Full unrestricted maximum likelihood (ML) approaches for inference on both fixed‐and random‐effects parameters in GLMMs have been extensively studied in the literature. However, parameter orderings or constraints may occur naturally in practice, and in such cases, the efficiency of a statistical method is improved by incorporating the parameter constraints into the ML estimation and hypothesis testing. In this paper, inference for GLMMs under linear inequality constraints is considered. The asymptotic properties of the constrained ML estimators and constrained likelihood ratio tests for GLMMs have been studied. Simulations investigated the empirical properties of the constrained ML estimators, compared to their unrestricted counterparts. An application to a recent survey on Canadian youth smoking patterns is also presented. As these survey data exhibit natural parameter orderings, a constrained GLMM has been considered for data analysis. The Canadian Journal of Statistics 40: 243–258; 2012 © 2012 Crown in the right of Canada
Keywords:Chi‐bar‐square distribution  constrained inference  generalized linear mixed model  gradient projection  maximum likelihood  youth smoking  MSC 2010: Primary 62F30  secondary 62J12
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