Constrained estimators that enforce variable selection and grouping of highly correlated data have been shown to be successful in finding sparse representations and obtaining good performance in prediction. We consider polytopes as a general class of compact and convex constraint regions. Well established procedures like LASSO (Tibshirani, 1996) or OSCAR (Bondell and Reich, 2008) are shown to be based on specific subclasses of polytopes. The general framework of polytopes can be used to investigate the geometric structure that underlies these procedures. Moreover, we propose a specifically designed class of polytopes that enforces variable selection and grouping. Simulation studies and an application illustrate the usefulness of the propose...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
In high-dimensional data settings where p » n, many penalized regularization approaches were studied...
Abstract. Grouping structures arise naturally in many statistical modeling problems. Several methods...
Constrained estimators that enforce variable selection and grouping of highly correlated data have b...
In this paper, a new method called the OSCAR (Octagonal Shrinkage and Clus-tering Algorithm for Regr...
The Octagonal Selection and Clustering Algorithm in Regression (OSCAR) proposed by Bondell and Reich...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
This paper deals with the grouped variable selection problem. A widely used strategy is to augment t...
The aim of variable selection is the identification of the most important predictors that define the...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by imp...
Shrinkage methods a b s t r a c t We study variable selection for partially linear models when the d...
peer-reviewedWe consider several least absolute shrinkage and selection operator (LASSO) penalized ...
A method is introduced for variable selection and prediction in linear regression problems where the...
We provide a necessary and sufficient condition for the uniqueness of penalized least-squares estima...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
In high-dimensional data settings where p » n, many penalized regularization approaches were studied...
Abstract. Grouping structures arise naturally in many statistical modeling problems. Several methods...
Constrained estimators that enforce variable selection and grouping of highly correlated data have b...
In this paper, a new method called the OSCAR (Octagonal Shrinkage and Clus-tering Algorithm for Regr...
The Octagonal Selection and Clustering Algorithm in Regression (OSCAR) proposed by Bondell and Reich...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
This paper deals with the grouped variable selection problem. A widely used strategy is to augment t...
The aim of variable selection is the identification of the most important predictors that define the...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by imp...
Shrinkage methods a b s t r a c t We study variable selection for partially linear models when the d...
peer-reviewedWe consider several least absolute shrinkage and selection operator (LASSO) penalized ...
A method is introduced for variable selection and prediction in linear regression problems where the...
We provide a necessary and sufficient condition for the uniqueness of penalized least-squares estima...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
In high-dimensional data settings where p » n, many penalized regularization approaches were studied...
Abstract. Grouping structures arise naturally in many statistical modeling problems. Several methods...