Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensional, with the number of covariates p being large relative to the sample size n, but sparse in that the number of active covariates is small compared to p. Treating the covariates as random and adopting an asymptotic scenario in which p increases with n, we show that Bayesian model selection using certain priors on the set of models is asymptotically equivalent to selecting a model using an extended Bayesian information criterion. Moreover, we prove that the smallest true model is selected by either of these methods with probability tending to one. Having addressed random covariates, we are also able to give a consistency result for pseudo-likel...
Abstract: We consider the use of Bayesian information criteria for se-lection of the graph underlyin...
We consider the regression model in the situation when the number of available regressors pn is muc...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
The classical model selection criteria, such as the Bayesian Information Criterion (BIC) or Akaike i...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
Abstract The first investigation is made of designs for screening experiments where the response var...
<p>In this thesis, we develop some Bayesian sparse learning methods for high dimensional data analys...
Inspired by analysis of genomic data, the primary quest is to identify associations between studied ...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
AbstractThe first investigation is made of designs for screening experiments where the response vari...
Gaussian graphical models with sparsity in the inverse covariance matrix are of significant interest...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Abstract: We consider the use of Bayesian information criteria for se-lection of the graph underlyin...
We consider the regression model in the situation when the number of available regressors pn is muc...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
The classical model selection criteria, such as the Bayesian Information Criterion (BIC) or Akaike i...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
Abstract The first investigation is made of designs for screening experiments where the response var...
<p>In this thesis, we develop some Bayesian sparse learning methods for high dimensional data analys...
Inspired by analysis of genomic data, the primary quest is to identify associations between studied ...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
AbstractThe first investigation is made of designs for screening experiments where the response vari...
Gaussian graphical models with sparsity in the inverse covariance matrix are of significant interest...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Abstract: We consider the use of Bayesian information criteria for se-lection of the graph underlyin...
We consider the regression model in the situation when the number of available regressors pn is muc...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...