Constrained least squares regression is an essential tool for high-dimensional data analysis. Given a partition G of input variables, this paper considers a particular class of nonconvex constraint functions that encourage the linear model to select a small number of variables from a small number of groups in G. Such constraints are relevant in many practical applications, such as Genome-Wide Association Studies (GWAS). Motivated by the efficiency of the Lasso homotopy method [3, 14], we present RepLasso, a greedy homotopy algorithm that tries to solve the induced sequence of nonconvex problems by solving a sequence of suitably adapted convex surrogate problems. We prove that in some situations RepLasso recovers the global minima of the non...
International audienceRegression with group-sparsity penalty plays a central role in high-dimensiona...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
In this thesis, we focus on the application of covariate reweighting with Lasso-style methods for re...
We show that the homotopy algorithm of Osborne, Presnell, and Turlach (2000), which has proved such ...
Constrained estimators that enforce variable selection and grouping of highly correlated data have b...
It has been shown that the problem of `1-penalized least-square regression com-monly referred to as ...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
We introduce the localized Lasso, which learns models that both are interpretable and have a high pr...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
<div><p>We consider approaches for improving the efficiency of algorithms for fitting nonconvex pena...
This paper proposes a new algorithm for multiple sparse regression in high dimensions, where the tas...
International audienceSparse signal restoration is usually formulated as the minimization of a quadr...
<div><p>We consider the task of fitting a regression model involving interactions among a potentiall...
The title Lasso has been suggested by Tibshirani [7] as a colourful name for a technique of variabl...
Model selection and sparse recovery are two important problems for which many regularization methods...
International audienceRegression with group-sparsity penalty plays a central role in high-dimensiona...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
In this thesis, we focus on the application of covariate reweighting with Lasso-style methods for re...
We show that the homotopy algorithm of Osborne, Presnell, and Turlach (2000), which has proved such ...
Constrained estimators that enforce variable selection and grouping of highly correlated data have b...
It has been shown that the problem of `1-penalized least-square regression com-monly referred to as ...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
We introduce the localized Lasso, which learns models that both are interpretable and have a high pr...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
<div><p>We consider approaches for improving the efficiency of algorithms for fitting nonconvex pena...
This paper proposes a new algorithm for multiple sparse regression in high dimensions, where the tas...
International audienceSparse signal restoration is usually formulated as the minimization of a quadr...
<div><p>We consider the task of fitting a regression model involving interactions among a potentiall...
The title Lasso has been suggested by Tibshirani [7] as a colourful name for a technique of variabl...
Model selection and sparse recovery are two important problems for which many regularization methods...
International audienceRegression with group-sparsity penalty plays a central role in high-dimensiona...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
In this thesis, we focus on the application of covariate reweighting with Lasso-style methods for re...