In this paper, we present a general class of multivariate priors for group-sparse modeling within the Bayesian framework. We show that special cases of this class correspond to multivariate versions of several classical priors used for sparse modeling. Hence, this general prior formulation is helpful in analyzing the properties of different modeling approaches and their connections. We derive the estimation procedures with these priors using variational inference for fully Bayesian estimation. In addition, we discuss the differences between the proposed inference and deterministic inference approaches with these priors. Finally, we show the flexibility of this modeling by considering several extensions such as multiple measurements, within-...
A family of prior distributions for covariance matrices is studied. Members of the family possess th...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
We explore the use of proper priors for variance parameters of certain sparse Bayesian regression mo...
A number of priors have been recently developed for Bayesian estimation of sparse models. In many ap...
Variational Inference (VI) has become a popular technique to approximate difficult-to-compute poster...
This paper presents a new variational Bayes algorithm for the adaptive estimation of signals possess...
Group structures arise naturally in a variety of modern data applications and statistical problems i...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
We introduce a factor analysis model that summarizes the dependencies between ob-served variable gro...
We introduce Group Spike-and-slab Variational Bayes (GSVB), a scalable method for group sparse regre...
Lack of independence in the residuals from linear regression motivates the use of random effect mode...
Sparsity-promoting prior along with Bayesian inference is an effective approach in solving sparse li...
In the context of statistical machine learning, sparse learning is a procedure that seeks a reconcil...
We consider the problem of sparse variable selection in nonparametric additive models, with the prio...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
A family of prior distributions for covariance matrices is studied. Members of the family possess th...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
We explore the use of proper priors for variance parameters of certain sparse Bayesian regression mo...
A number of priors have been recently developed for Bayesian estimation of sparse models. In many ap...
Variational Inference (VI) has become a popular technique to approximate difficult-to-compute poster...
This paper presents a new variational Bayes algorithm for the adaptive estimation of signals possess...
Group structures arise naturally in a variety of modern data applications and statistical problems i...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
We introduce a factor analysis model that summarizes the dependencies between ob-served variable gro...
We introduce Group Spike-and-slab Variational Bayes (GSVB), a scalable method for group sparse regre...
Lack of independence in the residuals from linear regression motivates the use of random effect mode...
Sparsity-promoting prior along with Bayesian inference is an effective approach in solving sparse li...
In the context of statistical machine learning, sparse learning is a procedure that seeks a reconcil...
We consider the problem of sparse variable selection in nonparametric additive models, with the prio...
This dissertation explores Bayesian model selection and estimation in settings where the model space...
A family of prior distributions for covariance matrices is studied. Members of the family possess th...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
We explore the use of proper priors for variance parameters of certain sparse Bayesian regression mo...