Extended Bayesian information criterion (EBIC) and extended Fisher information criterion (EFIC) are two popular criteria for model selection in sparse high-dimensional linear regression models. However, EBIC is inconsistent in scenarios when the signal-to-noise-ratio (SNR) is high but the sample size is small, and EFIC is not invariant to data scaling, which affects its performance under different signal and noise statistics. In this paper, we present a refined criterion called EBIC R where the ‘R’ stands for robust. EBIC R is an improved version of EBIC and EFIC. It is scale-invariant and a consistent estimator of the true model as the sample size grows large and/or when the SNR tends to infinity. The performance of EBIC R is compared to e...
We consider the regression model in the situation when the number of available regressors pn is muc...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
Extended Bayesian information criterion (EBIC) and extended Fisher information criterion (EFIC) are ...
A fundamental requirement in data analysis is fitting the data to a model that can be used for the p...
A fundamental requirement in data analysis is fitting the data to a model that can be used for the p...
AbstractAn exhaustive search as required for traditional variable selection methods is impractical i...
Model selection is an indispensable part of data analysis dealing very frequently with fitting and p...
Statistical model selection is a great challenge when the number of accessible measurements is much ...
Statistical model selection is a great challenge when the number of accessible measurements is much ...
Statistical model selection is a great challenge when the number of accessible measurements is much ...
AbstractAn exhaustive search as required for traditional variable selection methods is impractical i...
The classical model selection criteria, such as the Bayesian Information Criterion (BIC) or Akaike i...
The small-n-large-P situation has become common in genetics research, medical studies, risk manageme...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
We consider the regression model in the situation when the number of available regressors pn is muc...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
Extended Bayesian information criterion (EBIC) and extended Fisher information criterion (EFIC) are ...
A fundamental requirement in data analysis is fitting the data to a model that can be used for the p...
A fundamental requirement in data analysis is fitting the data to a model that can be used for the p...
AbstractAn exhaustive search as required for traditional variable selection methods is impractical i...
Model selection is an indispensable part of data analysis dealing very frequently with fitting and p...
Statistical model selection is a great challenge when the number of accessible measurements is much ...
Statistical model selection is a great challenge when the number of accessible measurements is much ...
Statistical model selection is a great challenge when the number of accessible measurements is much ...
AbstractAn exhaustive search as required for traditional variable selection methods is impractical i...
The classical model selection criteria, such as the Bayesian Information Criterion (BIC) or Akaike i...
The small-n-large-P situation has become common in genetics research, medical studies, risk manageme...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
We consider the regression model in the situation when the number of available regressors pn is muc...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...