The aim of variable selection is the identification of the most important predictors that define the response of a linear system. Many techniques for variable selection use a constrained least squares (LS) formulation in which the constraint is imposed in the 1-norm (the lasso), or the 2-norm (Tikhonov regularisation), or a linear combination of these norms (the elastic net). It is always assumed that a constraint must necessarily be imposed, but the consequences of its imposition have not been addressed. This assumption is considered in this paper and it is shown that the correct application of Tikhonov regularisation to the overdetermined LS problem min kAx − bk2 requires that A and b satisfy a condition C. If this condition is satisfie...
As a pivotal tool to build interpretive models, variable selection plays an increasingly important r...
In this thesis a method for the partially norm constrained least squares problem is presented. The m...
This manuscript addresses the problem of model selection, studied in the linear regression framework...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
Sample selection arises when the outcome of interest is partially observed in a study. A common cha...
More attention has been given to regularization methods in the last two decades as a result of exiti...
In sparse high-dimensional data, the selection of a model can lead to an overestimation of the numbe...
In this paper we consider a regularization approach to variable selection when the regression functi...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
Constrained estimators that enforce variable selection and grouping of highly correlated data have b...
We begin with a few historical remarks about what might be called the regularization class of statis...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
As a pivotal tool to build interpretive models, variable selection plays an increasingly important r...
In this thesis a method for the partially norm constrained least squares problem is presented. The m...
This manuscript addresses the problem of model selection, studied in the linear regression framework...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
Sample selection arises when the outcome of interest is partially observed in a study. A common cha...
More attention has been given to regularization methods in the last two decades as a result of exiti...
In sparse high-dimensional data, the selection of a model can lead to an overestimation of the numbe...
In this paper we consider a regularization approach to variable selection when the regression functi...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
Constrained estimators that enforce variable selection and grouping of highly correlated data have b...
We begin with a few historical remarks about what might be called the regularization class of statis...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
As a pivotal tool to build interpretive models, variable selection plays an increasingly important r...
In this thesis a method for the partially norm constrained least squares problem is presented. The m...
This manuscript addresses the problem of model selection, studied in the linear regression framework...