We consider the problem of model (or variable) selection in the classical regression model based on cross-validation with an added penalty term for penalizing overfitting. Under some weak conditions, the new criterion is shown to be strongly consistent in the sense that with probability one, for all large n, the criterion chooses the smallest true model. The penalty function denoted by Cn depends on the sample size n and is chosen to ensure the consistency in the selection of true model. There are various choices of Cn suggested in the literature on model selection. In this paper we show that a particular choice of Cn based on observed data, which makes it random, preserves the consistency property and provides improved performance over a f...
This paper deals with the bias correction of the cross-validation (CV) criterion for a choice of mod...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
For the problem of model selection, full cross-validation has been proposed as alternative criterion...
For the problem of model selection, full cross-validation has been proposed as an alternative criter...
This article gives a robust technique for model selection in regression models, an important aspect ...
that leave-one-out cross-validation is not subject to the “no-free-lunch ” criticism. Despite this o...
Cross-validation (CV) methods are popular for selecting the tuning parameter in the high-dimensional...
We consider the problem of model (or variable) selection in the classical regression model using the...
Variable selection criteria in a linear regression model are analyzed, considering consistency and e...
Summary For the problem of model selection full crossvalidation has been proposed as alternative c...
Several model selection criteria which generally can be classied as the penalized robust method are ...
A linear mixed model is a useful technique to explain observations by regarding them as realizations...
Model selection in nonparametric and semiparametric regression is of both theoretical and practical ...
We present a new family of model selection algorithms based on the resampling heuristics. It can be ...
This paper deals with the bias correction of the cross-validation (CV) criterion for a choice of mod...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
For the problem of model selection, full cross-validation has been proposed as alternative criterion...
For the problem of model selection, full cross-validation has been proposed as an alternative criter...
This article gives a robust technique for model selection in regression models, an important aspect ...
that leave-one-out cross-validation is not subject to the “no-free-lunch ” criticism. Despite this o...
Cross-validation (CV) methods are popular for selecting the tuning parameter in the high-dimensional...
We consider the problem of model (or variable) selection in the classical regression model using the...
Variable selection criteria in a linear regression model are analyzed, considering consistency and e...
Summary For the problem of model selection full crossvalidation has been proposed as alternative c...
Several model selection criteria which generally can be classied as the penalized robust method are ...
A linear mixed model is a useful technique to explain observations by regarding them as realizations...
Model selection in nonparametric and semiparametric regression is of both theoretical and practical ...
We present a new family of model selection algorithms based on the resampling heuristics. It can be ...
This paper deals with the bias correction of the cross-validation (CV) criterion for a choice of mod...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...