The penalized least squares approach with smoothly clipped absolute deviation penalty has been consistently demonstrated to be an attractive regression shrinkage and selection method. It not only automatically and consistently selects the important variables, but also produces estimators which are as efficient as the oracle estimator. However, these attractive features depend on appropriate choice of the tuning parameter. We show that the commonly used generalized crossvalidation cannot select the tuning parameter satisfactorily, with a nonignorable overfitting effect in the resulting model. In addition, we propose a BIC tuning parameter selector, which is shown to be able to identify the true model consistently. Simulation studies are pres...
We propose variable selection procedures based on penalized score functions derived for linear measu...
We propose variable selection procedures based on penalized score functions derived for linear measu...
<div><p>The adaptive Lasso is a commonly applied penalty for variable selection in regression modeli...
The penalised least squares approach with smoothly clipped absolute deviation penalty has been consi...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Penalized regression models are popularly used in high-dimensional data analysis to conduct vari-abl...
Variable selection has been studied using different approaches. Its growing importance lies in numer...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
Summary: Shrinkage-type variable selection procedures have recently seen increasing applications in ...
Variable selection has been studied using different approaches. Its growing importance lies in numer...
The tuning parameter selection strategy for penalized estimation is crucial to identify a model that...
Asymptotic behavior of the tuning parameter selection in the standard cross-validation methods is in...
We propose variable selection procedures based on penalized score functions derived for linear measu...
We propose variable selection procedures based on penalized score functions derived for linear measu...
<div><p>The adaptive Lasso is a commonly applied penalty for variable selection in regression modeli...
The penalised least squares approach with smoothly clipped absolute deviation penalty has been consi...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Penalized regression models are popularly used in high-dimensional data analysis to conduct vari-abl...
Variable selection has been studied using different approaches. Its growing importance lies in numer...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
Summary: Shrinkage-type variable selection procedures have recently seen increasing applications in ...
Variable selection has been studied using different approaches. Its growing importance lies in numer...
The tuning parameter selection strategy for penalized estimation is crucial to identify a model that...
Asymptotic behavior of the tuning parameter selection in the standard cross-validation methods is in...
We propose variable selection procedures based on penalized score functions derived for linear measu...
We propose variable selection procedures based on penalized score functions derived for linear measu...
<div><p>The adaptive Lasso is a commonly applied penalty for variable selection in regression modeli...