We consider the problem of variable selection in high-dimensional settings with missing observations among the covariates. To address this relatively understudied problem, we propose a new synergistic procedure -- adaptive Bayesian SLOPE -- which effectively combines the SLOPE method (sorted l1 regularization) together with the Spike-and-Slab LASSO method. We position our approach within a Bayesian framework which allows for simultaneous variable selection and parameter estimation, despite the missing values. As with the Spike-and-Slab LASSO, the coefficients are regarded as arising from a hierarchical model consisting of two groups: (1) the spike for the inactive and (2) the slab for the active. However, instead of assigning independent sp...
International audienceLogistic regression is a common classification method in supervised learning. ...
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 consider the problem of variable selection in high-dimensional settings with missing observations...
We consider the problem of variable selection in high-dimensional settings with missing observations...
We consider the problem of variable selection in high-dimensional settings with missing observations...
We consider the problem of variable selection in high-dimensional settings with missing observations...
The problem of missing data has existed since the beginning of data analysis, as missing values are ...
The problem of missing data has existed since the beginning of data analysis, as missing values are ...
The problem of missing data has existed since the beginning of data analysis, as missing values are ...
In high-dimensional regression models, variable selection becomes challenging from a computational a...
Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its potenti...
The lasso (Tibshirani,1996) has sparked interest in the use of penalization of the log-likelihood f...
Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its potenti...
<p>Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its pote...
International audienceLogistic regression is a common classification method in supervised learning. ...
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 consider the problem of variable selection in high-dimensional settings with missing observations...
We consider the problem of variable selection in high-dimensional settings with missing observations...
We consider the problem of variable selection in high-dimensional settings with missing observations...
We consider the problem of variable selection in high-dimensional settings with missing observations...
The problem of missing data has existed since the beginning of data analysis, as missing values are ...
The problem of missing data has existed since the beginning of data analysis, as missing values are ...
The problem of missing data has existed since the beginning of data analysis, as missing values are ...
In high-dimensional regression models, variable selection becomes challenging from a computational a...
Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its potenti...
The lasso (Tibshirani,1996) has sparked interest in the use of penalization of the log-likelihood f...
Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its potenti...
<p>Despite the wide adoption of spike-and-slab methodology for Bayesian variable selection, its pote...
International audienceLogistic regression is a common classification method in supervised learning. ...
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...