Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dimensional data, particularly when the number of predictors greatly exceeds the sample size, selection of relevant predictors for regression is a challenging problem. Meth-ods such as sure screening, forward selection, or penalized regressions are commonly used. Bayesian variable selection methods place prior distributions on the parameters along with a prior over model space, or equivalently, a mixture prior on the parameters having mass at zero. Since exhaustive enumeration is not feasible, posterior model probabilities are often obtained via long MCMC runs. The chosen model can depend heavily on various choices for priors and also posterior t...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Modern applications of statistical approaches involve high-dimensional complex data, where variable ...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
Doctor of PhilosophyDepartment of StatisticsGyuhyeong GohBayesian model selection has enjoyed consid...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Inspired by analysis of genomic data, the primary quest is to identify associations between studied ...
AbstractAn exhaustive search as required for traditional variable selection methods is impractical i...
Modern data mining and bioinformatics have presented an impor-tant playground for statistical learni...
<p>In this thesis, we develop some Bayesian sparse learning methods for high dimensional data analys...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Modern applications of statistical approaches involve high-dimensional complex data, where variable ...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
Doctor of PhilosophyDepartment of StatisticsGyuhyeong GohBayesian model selection has enjoyed consid...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Inspired by analysis of genomic data, the primary quest is to identify associations between studied ...
AbstractAn exhaustive search as required for traditional variable selection methods is impractical i...
Modern data mining and bioinformatics have presented an impor-tant playground for statistical learni...
<p>In this thesis, we develop some Bayesian sparse learning methods for high dimensional data analys...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Modern applications of statistical approaches involve high-dimensional complex data, where variable ...