International audienceWe address the problem of Bayesian variable selection for high-dimensional lin-ear regression. We consider a generative model that uses a spike-and-slab-like prior distribution obtained by multiplying a deterministic binary vector, which traduces the sparsity of the problem, with a random Gaussian parameter vector. The origi-nality of the work is to consider inference through relaxing the model and using a type-II log-likelihood maximization based on an EM algorithm. Model selection is performed afterwards relying on Occam's razor and on a path of models found by the EM algorithm. Numerical comparisons between our method, called spinyReg, and state-of-the-art high-dimensional variable selection algorithms (such as lass...
Due to recent advancements in fields such as information technology and genomics, nowadays one commo...
We consider the linear regression problem. We propose the S-Lasso procedure to estimate the unknown ...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
High-dimensional data, with many more covariates than observations, such as genomic data for example...
High-dimensional data, with many more covariates than observations, such as genomic data for example...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
Due to recent advancements in fields such as information technology and genomics, nowadays one commo...
We consider the linear regression problem. We propose the S-Lasso procedure to estimate the unknown ...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
International audienceWe address the problem of Bayesian variable selection for high-dimensional lin...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
High-dimensional data, with many more covariates than observations, such as genomic data for example...
High-dimensional data, with many more covariates than observations, such as genomic data for example...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Variable selection plays an important role for the high dimensional data analysis. In this work, we ...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
Due to recent advancements in fields such as information technology and genomics, nowadays one commo...
We consider the linear regression problem. We propose the S-Lasso procedure to estimate the unknown ...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...