[[abstract]]Generalized linear mixed models (GLMMs) have been applied widely in the analysis of longitudinal data. This model confers two important advantages, namely, the flexibility to include random effects and the ability to make inference about complex covariances. In practice, however, the inference of variance components can be a difficult task due to the complexity of the model itself and the dimensionality of the covariance matrix of random effects. Here we first discuss for GLMMs the relation between Bayesian posterior estimates and penalized quasi-likelihood (PQL) estimates, based on the generalization of Harville’s result for general linear models. Next, we perform fully Bayesian analyses for the random covariance matrix using t...
In small samples it is well known that the standard methods for estimating variance components in a ...
A default strategy for fully Bayesian model determination for generalised linear mixed models (GLMMs...
Generalized additive mixed models extend the common parametric predictor of generalized linear model...
[[abstract]]The test of variance components of possibly correlated random effects in generalized lin...
Generalized linear mixed models (GLMMs) continue to grow in popularity due to their ability to direc...
Linear mixed effects models arise quite naturally in a number of settings. Two of the more prominent...
AbstractIn view of the cumbersome and often intractable numerical integrations required for a full l...
In small samples it is well known that the standard methods for estimating variance components in a ...
In random effect models, error variance (stage 1 variance) and scalar random effect variance compone...
Generalized linear mixed models are now popular in the animal breeding and biostatistics literature ...
AbstractBayesian inference methods are used extensively in the analysis of Generalized Linear Mixed ...
This work proposes joint modeling of parameters in the biparametric exponential family, including h...
Maximum likelihood (ML) estimation of generalized linear mixed models (GLMMs) is technically challen...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
Joint models for a wide class of response variables and longitudinal measurements consist on a mixed...
In small samples it is well known that the standard methods for estimating variance components in a ...
A default strategy for fully Bayesian model determination for generalised linear mixed models (GLMMs...
Generalized additive mixed models extend the common parametric predictor of generalized linear model...
[[abstract]]The test of variance components of possibly correlated random effects in generalized lin...
Generalized linear mixed models (GLMMs) continue to grow in popularity due to their ability to direc...
Linear mixed effects models arise quite naturally in a number of settings. Two of the more prominent...
AbstractIn view of the cumbersome and often intractable numerical integrations required for a full l...
In small samples it is well known that the standard methods for estimating variance components in a ...
In random effect models, error variance (stage 1 variance) and scalar random effect variance compone...
Generalized linear mixed models are now popular in the animal breeding and biostatistics literature ...
AbstractBayesian inference methods are used extensively in the analysis of Generalized Linear Mixed ...
This work proposes joint modeling of parameters in the biparametric exponential family, including h...
Maximum likelihood (ML) estimation of generalized linear mixed models (GLMMs) is technically challen...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
Joint models for a wide class of response variables and longitudinal measurements consist on a mixed...
In small samples it is well known that the standard methods for estimating variance components in a ...
A default strategy for fully Bayesian model determination for generalised linear mixed models (GLMMs...
Generalized additive mixed models extend the common parametric predictor of generalized linear model...