We describe a Bayesian method for group feature selection in linear regression problems. The method is based on a generalized version of the standard spike-and-slab prior distribution which is often used for individual feature selection. Exact Bayesian inference under the prior considered is infeasible for typical regression problems. However, approximate inference can be carried out efficiently using Expectation Propagation (EP). A detailed analysis of the generalized spike-and-slab prior shows that it is well suited for regression problems that are sparse at the group level. Furthermore, this prior can be used to introduce prior knowledge about specific groups of features that are a priori believed to be more relevant. An experimen...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
The R package spikeSlabGAM implements Bayesian variable selection, model choice, and regularized est...
We describe a Bayesian method for group feature selection in linear regression problems. The method ...
An expectation propagation (EP) algorithm is proposed for approximate inference in linear regression...
In the context of statistical machine learning, sparse learning is a procedure that seeks a reconcil...
We introduce Group Spike-and-slab Variational Bayes (GSVB), a scalable method for group sparse regre...
Group structures arise naturally in a variety of modern data applications and statistical problems i...
In this paper we propose a Bayesian model for multi-task feature selection. This model is based on a...
In this paper we propose a Bayesian model for multi-task feature selection. This model is based on a...
In this work, we address the problem of solving a series of underdetermined linear inverse problembl...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In this paper a new Bayesian model for sparse linear regression with a spatio-temporal structure is ...
Variable selection in the linear regression model takes many apparent faces from both frequentist an...
We propose two multivariate extensions of the Bayesian group lasso for variable selection and estima...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
The R package spikeSlabGAM implements Bayesian variable selection, model choice, and regularized est...
We describe a Bayesian method for group feature selection in linear regression problems. The method ...
An expectation propagation (EP) algorithm is proposed for approximate inference in linear regression...
In the context of statistical machine learning, sparse learning is a procedure that seeks a reconcil...
We introduce Group Spike-and-slab Variational Bayes (GSVB), a scalable method for group sparse regre...
Group structures arise naturally in a variety of modern data applications and statistical problems i...
In this paper we propose a Bayesian model for multi-task feature selection. This model is based on a...
In this paper we propose a Bayesian model for multi-task feature selection. This model is based on a...
In this work, we address the problem of solving a series of underdetermined linear inverse problembl...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In this paper a new Bayesian model for sparse linear regression with a spatio-temporal structure is ...
Variable selection in the linear regression model takes many apparent faces from both frequentist an...
We propose two multivariate extensions of the Bayesian group lasso for variable selection and estima...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
The R package spikeSlabGAM implements Bayesian variable selection, model choice, and regularized est...