Variable selection techniques have been well researched and used in many different fields. There is rich literature on Bayesian variable selection in linear regression models, but only few of them are about mixed effects. The topic of the thesis is Bayesian variable selection in linear mixed effect models. The choice of methods to achieve this goal is to induce different shrinkage priors. Both unimodal shrinkage priors and spike-and-slab priors are used and compared. The distributions that have been chosen, either as unimodal priors or parts of the spike-and-slab priors are the Normal distribution, the Student-t distribution and the Laplace distribution. Both the simulations and the real dataset studies have been carried out, with the inten...
High-dimensional data, with many more covariates than observations, such as genomic data for example...
Linear mixed-effects models are a class of models widely used for analyzing different types of data:...
In objective Bayesian model selection, no single criterion has emerged as dominant in defining objec...
Variable selection techniques have been well researched and used in many different fields. There is ...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Variable selection in the linear regression model takes many apparent faces from both frequentist an...
In linear regression problems with many predictors, penalized regression techniques are often used t...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
Many studies in recent time include a large number of predictor variables, but typically only a few ...
Linear mixed effects models are highly flexible in handling a broad range of data types and are the...
Linear Mixed Models (LMM) provide a common and convenient framework for the analysis of longitudinal...
proposed in this dissertation. Under this Bayesian framework, empirical and fully Bayes variable sel...
This article proposes a new data-based prior distribution for the error vari-ance in a Gaussian line...
A small body of literature has used the spike and slab prior specification for model selection with ...
From a Bayesian viewpoint, the answer (in theory, at least) to the general model selection problem i...
High-dimensional data, with many more covariates than observations, such as genomic data for example...
Linear mixed-effects models are a class of models widely used for analyzing different types of data:...
In objective Bayesian model selection, no single criterion has emerged as dominant in defining objec...
Variable selection techniques have been well researched and used in many different fields. There is ...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Variable selection in the linear regression model takes many apparent faces from both frequentist an...
In linear regression problems with many predictors, penalized regression techniques are often used t...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
Many studies in recent time include a large number of predictor variables, but typically only a few ...
Linear mixed effects models are highly flexible in handling a broad range of data types and are the...
Linear Mixed Models (LMM) provide a common and convenient framework for the analysis of longitudinal...
proposed in this dissertation. Under this Bayesian framework, empirical and fully Bayes variable sel...
This article proposes a new data-based prior distribution for the error vari-ance in a Gaussian line...
A small body of literature has used the spike and slab prior specification for model selection with ...
From a Bayesian viewpoint, the answer (in theory, at least) to the general model selection problem i...
High-dimensional data, with many more covariates than observations, such as genomic data for example...
Linear mixed-effects models are a class of models widely used for analyzing different types of data:...
In objective Bayesian model selection, no single criterion has emerged as dominant in defining objec...