Statistical model selection is a great challenge when the number of accessible measurements is much smaller than the dimension of the parameter space. We study the problem of model selection in the context of subset selection for high-dimensional linear regressions. Accordingly, we propose a new model selection criterion with the Fisher information that leads to the selection of a parsimonious model from all the combinatorial models up to some maximum level of sparsity. We analyze the performance of our criterion as the number of measurements grows to infinity, as well as when the noise variance tends to zero. In each case, we prove that our proposed criterion gives the true model with a probability approaching one. Additionally, we devise ...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
We consider the problem of variable selection in high-dimensional linear models where the number of ...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
Statistical model selection is a great challenge when the number of accessible measurements is much ...
The fundamental importance of model specification has motivated researchers to study different aspec...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
A fundamental requirement in data analysis is fitting the data to a model that can be used for the p...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
We consider the problem of model selection for high-dimensional linear regressions in the context of...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
Extended Bayesian information criterion (EBIC) and extended Fisher information criterion (EFIC) are ...
In the high-dimensional regression model a response variable is linearly related to p covariates, bu...
Model selection is an indispensable part of data analysis dealing very frequently with fitting and p...
Due to recent advancements in fields such as information technology and genomics, nowadays one commo...
\ud Motivated by the recent trend in ``Big data", we are interested in the case where both $p$, the ...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
We consider the problem of variable selection in high-dimensional linear models where the number of ...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
Statistical model selection is a great challenge when the number of accessible measurements is much ...
The fundamental importance of model specification has motivated researchers to study different aspec...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
A fundamental requirement in data analysis is fitting the data to a model that can be used for the p...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
We consider the problem of model selection for high-dimensional linear regressions in the context of...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
Extended Bayesian information criterion (EBIC) and extended Fisher information criterion (EFIC) are ...
In the high-dimensional regression model a response variable is linearly related to p covariates, bu...
Model selection is an indispensable part of data analysis dealing very frequently with fitting and p...
Due to recent advancements in fields such as information technology and genomics, nowadays one commo...
\ud Motivated by the recent trend in ``Big data", we are interested in the case where both $p$, the ...
We propose a Bayesian variable selection procedure for ultrahigh-dimensional linear regression model...
We consider the problem of variable selection in high-dimensional linear models where the number of ...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...