Variable selection in the linear regression model takes many apparent faces from both frequentist and Bayesian standpoints. In this paper we introduce a variable selection method referred to as a rescaled spike and slab model. We study the importance of prior hierarchical specifications and draw connections to frequentist generalized ridge regression estimation. Specifically, we study the usefulness of continuous bimodal priors to model hypervariance parameters, and the effect scaling has on the posterior mean through its relationship to penalization. Several model selection strategies, some frequentist and some Bayesian in nature, are developed and studied theoretically. We demonstrate the importance of selective shrinkage for effective va...
We develop methodology and theory for a mean field variational Bayes approximation to a linear model...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
Variable selection techniques have been well researched and used in many different fields. There is ...
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...
A small body of literature has used the spike and slab prior specification for model selection with ...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its potenti...
<p>Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its pote...
Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its potenti...
The R package spikeSlabGAM implements Bayesian variable selection, model choice, and regularized est...
This study investigates the effectiveness of Bayesian variable selection (BVS) procedures in dealing...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
We develop methodology and theory for a mean field variational Bayes approximation to a linear model...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
Variable selection techniques have been well researched and used in many different fields. There is ...
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...
A small body of literature has used the spike and slab prior specification for model selection with ...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its potenti...
<p>Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its pote...
Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its potenti...
The R package spikeSlabGAM implements Bayesian variable selection, model choice, and regularized est...
This study investigates the effectiveness of Bayesian variable selection (BVS) procedures in dealing...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
We develop methodology and theory for a mean field variational Bayes approximation to a linear model...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...