Cross-validation (CV) type of methods have been widely used to facilitate model estimation and variable selection. In this work, we suggest a new K-fold CV procedure to select a candidate ‘optimal’ model from each hold-out fold and average the K candidate ‘optimal’ models to obtain the ultimate model. Due to the averaging effect, the variance of the proposed estimates can be significantly reduced. This new procedure results in more stable and efficient parameter estimation than the classical K-fold CV procedure. In addition, we show the asymptotic equivalence between the proposed and classical CV procedures in the linear regression setting. We also demonstrate the broad applicability of the proposed procedure via two examples of parameter s...
With the increasing size of today’s data sets, finding the right parameter configuration in model se...
The ridge regression, lasso, elastic net, forward stagewise regression and the least angle regressio...
One of the most widely used model selection techniques isV-fold cross-validation (Geisser [Gei75]). ...
Cross-validation (CV) type of methods have been widely used to facilitate model estimation and varia...
Variance estimation for survey estimators that include modeling relies on approximations that ignore...
In nonparametric regression, it is generally crucial to select “nearly ” optimal smoothing parameter...
In this paper a new method of selecting the smoothing parameter in nonparametric regression called m...
The holdout estimation of the expected loss of a model is biased and noisy. Yet, practicians often r...
We consider the problem of model (or variable) selection in the classical regression model based on ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
In model building and model evaluation, cross-validation is a frequently used resampling method. Unf...
This article gives a robust technique for model selection in regression models, an important aspect ...
Cross-validation (CV) methods are popular for selecting the tuning parameter in the high-dimensional...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
This paper investigates two types of results that support the use of Generalized Cross Validation (G...
With the increasing size of today’s data sets, finding the right parameter configuration in model se...
The ridge regression, lasso, elastic net, forward stagewise regression and the least angle regressio...
One of the most widely used model selection techniques isV-fold cross-validation (Geisser [Gei75]). ...
Cross-validation (CV) type of methods have been widely used to facilitate model estimation and varia...
Variance estimation for survey estimators that include modeling relies on approximations that ignore...
In nonparametric regression, it is generally crucial to select “nearly ” optimal smoothing parameter...
In this paper a new method of selecting the smoothing parameter in nonparametric regression called m...
The holdout estimation of the expected loss of a model is biased and noisy. Yet, practicians often r...
We consider the problem of model (or variable) selection in the classical regression model based on ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
In model building and model evaluation, cross-validation is a frequently used resampling method. Unf...
This article gives a robust technique for model selection in regression models, an important aspect ...
Cross-validation (CV) methods are popular for selecting the tuning parameter in the high-dimensional...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
This paper investigates two types of results that support the use of Generalized Cross Validation (G...
With the increasing size of today’s data sets, finding the right parameter configuration in model se...
The ridge regression, lasso, elastic net, forward stagewise regression and the least angle regressio...
One of the most widely used model selection techniques isV-fold cross-validation (Geisser [Gei75]). ...