Variable selection techniques have become increasingly popular amongst statisticians due to an increased number of regression and classification applications involving high-dimensional data where we expect some predictors to be unimportant. In this context, Bayesian variable selection techniques involving Markov chain Monte Carlo exploration of the posterior distribution over models can be prohibitively computationally expensive and so there has been attention paid to quasi-Bayesian approaches such as maximum a posteriori (MAP) estimation using priors that induce sparsity in such estimates. We focus on this latter approach, expanding on the hierarchies proposed to date to provide a Bayesian interpretation and generalization of state-of-the-...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
Solving inverse problems with sparsity promoting regularizing penalties can be recast in the Bayesia...
Solving inverse problems with sparsity promoting regularizing penalties can be recast in the Bayesia...
Solving inverse problems with sparsity promoting regularizing penalties can be recast in the Bayesia...
Abstract—Many practical methods for finding maximally sparse coefficient expansions involve solving ...
Sparsity-promoting prior along with Bayesian inference is an effective approach in solving sparse li...
We explore various Bayesian approaches to estimate partial Gaussian graphical models. Our hierarchic...
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
Group structures arise naturally in a variety of modern data applications and statistical problems i...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
Solving inverse problems with sparsity promoting regularizing penalties can be recast in the Bayesia...
Solving inverse problems with sparsity promoting regularizing penalties can be recast in the Bayesia...
Solving inverse problems with sparsity promoting regularizing penalties can be recast in the Bayesia...
Abstract—Many practical methods for finding maximally sparse coefficient expansions involve solving ...
Sparsity-promoting prior along with Bayesian inference is an effective approach in solving sparse li...
We explore various Bayesian approaches to estimate partial Gaussian graphical models. Our hierarchic...
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
Group structures arise naturally in a variety of modern data applications and statistical problems i...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
This dissertation explores Bayesian model selection and estimation in settings where the model space...