For the problem of model selection, full cross-validation has been proposed as alternative criterion to the traditional cross-validation, particularly in cases where the latter one is not well defined. To justify the use of the new proposal we show that under some conditions, both criteria share the same asymptotic optimality property when selecting among linear regression models
In this paper, the cross-validation methods namely the $$C_{p}$$Cp, PRESS and GCV are presented unde...
In this paper, we apply the model selection approach based on likelihood ratio (LR) tests developed ...
AbstractIn this paper we propose a cross-validation selection criterion to determine asymptotically ...
For the problem of model selection, full cross-validation has been proposed as an alternative criter...
Summary For the problem of model selection full crossvalidation has been proposed as alternative c...
We consider the problem of model (or variable) selection in the classical regression model based on ...
AbstractIn this paper we propose a cross-validation selection criterion to determine asymptotically ...
In this paper we propose a cross-validation selection criterion to determine asymptotically the corr...
This article gives a robust technique for model selection in regression models, an important aspect ...
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 alternative criterion...
that leave-one-out cross-validation is not subject to the “no-free-lunch ” criticism. Despite this o...
The problem considered here is that of using a data-driven procedure to select a good estimate from ...
Model selection in nonparametric and semiparametric regression is of both theoretical and practical ...
Several model selection criteria which generally can be classied as the penalized robust method are ...
In this paper, the cross-validation methods namely the $$C_{p}$$Cp, PRESS and GCV are presented unde...
In this paper, we apply the model selection approach based on likelihood ratio (LR) tests developed ...
AbstractIn this paper we propose a cross-validation selection criterion to determine asymptotically ...
For the problem of model selection, full cross-validation has been proposed as an alternative criter...
Summary For the problem of model selection full crossvalidation has been proposed as alternative c...
We consider the problem of model (or variable) selection in the classical regression model based on ...
AbstractIn this paper we propose a cross-validation selection criterion to determine asymptotically ...
In this paper we propose a cross-validation selection criterion to determine asymptotically the corr...
This article gives a robust technique for model selection in regression models, an important aspect ...
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 alternative criterion...
that leave-one-out cross-validation is not subject to the “no-free-lunch ” criticism. Despite this o...
The problem considered here is that of using a data-driven procedure to select a good estimate from ...
Model selection in nonparametric and semiparametric regression is of both theoretical and practical ...
Several model selection criteria which generally can be classied as the penalized robust method are ...
In this paper, the cross-validation methods namely the $$C_{p}$$Cp, PRESS and GCV are presented unde...
In this paper, we apply the model selection approach based on likelihood ratio (LR) tests developed ...
AbstractIn this paper we propose a cross-validation selection criterion to determine asymptotically ...