Title of article :
Hierarchical likelihood methods for nonlinear and generalized linear mixed models with missing data and measurement errors in covariates
Author/Authors :
Noh، نويسنده , , Maengseok and Wu، نويسنده , , Phang-Lang and Lee، نويسنده , , Youngjo، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2012
Pages :
10
From page :
42
To page :
51
Abstract :
Nonlinear mixed-effects (NLME) models and generalized linear mixed models (GLMM) are popular in the analyses of longitudinal data and clustered data. Covariates are often introduced to partially explain the large between individual (cluster) variation. Many of these covariates, however, contain missing data and/or are measured with errors. In these cases, likelihood inference can be computationally very challenging since the observed data likelihood involves a high-dimensional and intractable integral. Computationally intensive methods such as Monte-Carlo EM algorithms may offer computational difficulties such as very slow convergence or even non-convergence. In this article, we consider hierarchical likelihood methods which approximate the observed-data likelihood using Laplace approximation so completely avoid the intractable integral. We evaluate the methods via simulation and illustrate the methods by two examples.
Keywords :
Generalized linear mixed models , Hierarchical likelihood , missing covariates , Measurement errors , Nonlinear mixed effects models
Journal title :
Journal of Multivariate Analysis
Serial Year :
2012
Journal title :
Journal of Multivariate Analysis
Record number :
1565795
Link To Document :
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