AbstractLin and Zhang (J. Roy. Statist. Soc. Ser. B 61 (1999) 381) proposed the generalized additive mixed model (GAMM) as a framework for analysis of correlated data, where normally distributed random effects are used to account for correlation in the data, and proposed to use double penalized quasi-likelihood (DPQL) to estimate the nonparametric functions in the model and marginal likelihood to estimate the smoothing parameters and variance components simultaneously. However, the normal distributional assumption for the random effects may not be realistic in many applications, and it is unclear how violation of this assumption affects ensuing inferences for GAMMs. For a particular class of GAMMs, we propose a conditional estimation proced...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
Generalized additive mixed models extend the common parametric predictor of generalized linear model...
Lin and Zhang [1] proposed the generalized additive mixed model (GAMM) as a frame-work for analysis ...
A new class of models, generalized additive mixed models (GAMMs), are proposed for analyzing correla...
We propose Bayesian generalized additive mixed models for correlated data, which arise frequently in...
Summary. Generalized additive mixed models are proposed for overdispersed and correlated data, which...
Generalized linear mixed-effect models are widely used for the analysis of correlated non-Gaussian d...
We consider the situation where the random effects in a generalized linear mixed model may be correl...
AbstractIn view of the cumbersome and often intractable numerical integrations required for a full l...
This thesis examines model selection for clustered data. Such data are often modeled using random ef...
Longitudinal data arise frequently in many studies where measurements are obtained from a subject r...
We consider generalized linear mixed models in which random effects are free of parametric distribut...
A common and important problem in clustered sampling designs is that the effect of within-cluster ex...
We show how to use generalized linear mixed models to adjust for confounding by cluster of the effec...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
Generalized additive mixed models extend the common parametric predictor of generalized linear model...
Lin and Zhang [1] proposed the generalized additive mixed model (GAMM) as a frame-work for analysis ...
A new class of models, generalized additive mixed models (GAMMs), are proposed for analyzing correla...
We propose Bayesian generalized additive mixed models for correlated data, which arise frequently in...
Summary. Generalized additive mixed models are proposed for overdispersed and correlated data, which...
Generalized linear mixed-effect models are widely used for the analysis of correlated non-Gaussian d...
We consider the situation where the random effects in a generalized linear mixed model may be correl...
AbstractIn view of the cumbersome and often intractable numerical integrations required for a full l...
This thesis examines model selection for clustered data. Such data are often modeled using random ef...
Longitudinal data arise frequently in many studies where measurements are obtained from a subject r...
We consider generalized linear mixed models in which random effects are free of parametric distribut...
A common and important problem in clustered sampling designs is that the effect of within-cluster ex...
We show how to use generalized linear mixed models to adjust for confounding by cluster of the effec...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
Generalized additive mixed models extend the common parametric predictor of generalized linear model...