Group structures arise naturally in a variety of modern data applications and statistical problems in the high-dimensional data setting where the number of variables can greatly exceed the number of observations. The group structures are usually very informative as they express the inherent similarities among the variables and observations and it is thus desirable to take the prior group information into consideration in the construction of statistical models in pursuit of efficient statistical inference. In this dissertation, we propose methods for three statistical problems: linear regression, graphical model, and sequential logistic regressions when group structures are present at either the variable level or the observation level. We ad...
In large-scale applications of undirected graphical models, such as social networks and biological n...
This technical note describes some Bayesian procedures for the analysis of group studies that use no...
We explore various Bayesian approaches to estimate partial Gaussian graphical models. Our hierarchic...
We describe a Bayesian method for group feature selection in linear regression problems. The method ...
We propose two multivariate extensions of the Bayesian group lasso for variable selection and estima...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
We propose two multivariate extensions of the Bayesian group lasso for variable selection and estima...
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...
We describe a Bayesian method for group feature selection in linear regression problems. The method...
The Bayesian framework offers a flexible tool for regularization in the high dimensional setting. In...
In this paper, we present a general class of multivariate priors for group-sparse modeling within th...
Abstract—Structured sparsity has recently emerged in statistics, machine learning and signal process...
© 2019 Zemei XuStatistical variable selection, also known as feature selection, has become an indisp...
In large-scale applications of undirected graphical models, such as social networks and biological n...
This technical note describes some Bayesian procedures for the analysis of group studies that use no...
We explore various Bayesian approaches to estimate partial Gaussian graphical models. Our hierarchic...
We describe a Bayesian method for group feature selection in linear regression problems. The method ...
We propose two multivariate extensions of the Bayesian group lasso for variable selection and estima...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
We propose two multivariate extensions of the Bayesian group lasso for variable selection and estima...
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...
We describe a Bayesian method for group feature selection in linear regression problems. The method...
The Bayesian framework offers a flexible tool for regularization in the high dimensional setting. In...
In this paper, we present a general class of multivariate priors for group-sparse modeling within th...
Abstract—Structured sparsity has recently emerged in statistics, machine learning and signal process...
© 2019 Zemei XuStatistical variable selection, also known as feature selection, has become an indisp...
In large-scale applications of undirected graphical models, such as social networks and biological n...
This technical note describes some Bayesian procedures for the analysis of group studies that use no...
We explore various Bayesian approaches to estimate partial Gaussian graphical models. Our hierarchic...