This paper investigates two types of results that support the use of Generalized Cross Validation (GCV) for variable selection under the assumption of sparsity. The first type of result is based on the well established links between GCV on one hand and Mallows's Cp and Stein Unbiased Risk Estimator (SURE) on the other hand. The result states that GCV performs as well as Cp or SURE in a regularized or penalized least squares problem as an estimator of the prediction error for the penalty in the neighborhood of its optimal value. This result can be seen as a refinement of an earlier result in GCV for soft thresholding of wavelet coefficients. The second novel result concentrates on the behavior of GCV for penalties near zero. Good behavior ne...
The generalized and smooth James-Stein thresholding functions link and extend the thresholding funct...
High-dimensional data applications often entail the use of various statistical and machine-learning ...
Selection of estimators is an essential task in modeling. A general framework is that the estimators...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Generalized cross-validation (GCV) is a popular parameter selection criterion for spline smoothing o...
A nonlinear wavelet shrinkage estimator was proposed in an earlier article by Huang and Lu. Such an ...
In nonparametric regression, it is generally crucial to select “nearly ” optimal smoothing parameter...
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 based on ...
We begin with a few historical remarks about what might be called the regularization class of statis...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
We study the problem of selection of regularization parameter in penalized Gaussian graphical models...
We apply the nonconcave penalized likelihood approach to obtain variable selections as well as shrin...
Asymptotic behavior of the tuning parameter selection in the standard cross-validation methods is in...
AbstractGeneralized cross-validation (GCV) is a widely used parameter selection criterion for spline...
The generalized and smooth James-Stein thresholding functions link and extend the thresholding funct...
High-dimensional data applications often entail the use of various statistical and machine-learning ...
Selection of estimators is an essential task in modeling. A general framework is that the estimators...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Generalized cross-validation (GCV) is a popular parameter selection criterion for spline smoothing o...
A nonlinear wavelet shrinkage estimator was proposed in an earlier article by Huang and Lu. Such an ...
In nonparametric regression, it is generally crucial to select “nearly ” optimal smoothing parameter...
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 based on ...
We begin with a few historical remarks about what might be called the regularization class of statis...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
We study the problem of selection of regularization parameter in penalized Gaussian graphical models...
We apply the nonconcave penalized likelihood approach to obtain variable selections as well as shrin...
Asymptotic behavior of the tuning parameter selection in the standard cross-validation methods is in...
AbstractGeneralized cross-validation (GCV) is a widely used parameter selection criterion for spline...
The generalized and smooth James-Stein thresholding functions link and extend the thresholding funct...
High-dimensional data applications often entail the use of various statistical and machine-learning ...
Selection of estimators is an essential task in modeling. A general framework is that the estimators...