International audienceThis paper considers the penalized least squares estimators with convex penalties or regularisation norms. We provide sparsity oracles inequalities for the prediction error for a general convex penalty and for the particular cases of Lasso and Group Lasso estimators in a regression setting. The main contributions are that our oracle inequalities are established for the more general case where the observations noise is issued from probability measures that satisfy a weak spectral gap (or Poincaré) inequality instead of gaussian distributions, and five easier to verify bounds on compatibility. We Illustrate our results on a heavy tailed example and a sub gaussian one; we especially give the explicit bounds of the oracle ...
With the abundance of large data, sparse penalized regression techniques are commonly used in data a...
In this paper, we investigate the theoretical guarantees of penalized $\lun$ minimization (also call...
This article considers penalized empirical loss minimization of convex loss functions with unknown t...
This paper considers the penalized least squares estimators with convex penalties or regularisation ...
Abstract: This paper studies oracle properties of!1-penalized least squares in nonparametric regress...
Abstract. This paper studies oracle properties of `1-penalized estima-tors of a probability density....
37 pagesWe consider the problem of estimating a sparse linear regression vector $\beta^*$ under a ga...
To restrict ourselves to the regime of sparse solutions has become the new paradigm for modern stati...
Dans cette thèse, nous considérons le problème de l’estimation paramétrique de la fonction de régres...
International audienceThis paper considers the problem of recovering a sparse signal representation ...
17 pagesWe consider the linear regression model with Gaussian error. We estimate the unknown paramet...
Scaled sparse linear regression jointly estimates the regression coefficients and noise level in a l...
This paper considers the problem of recovering a sparse signal representation according to a signal ...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...
Abstract—This paper addresses the problem of sparsity penal-ized least squares for applications in s...
With the abundance of large data, sparse penalized regression techniques are commonly used in data a...
In this paper, we investigate the theoretical guarantees of penalized $\lun$ minimization (also call...
This article considers penalized empirical loss minimization of convex loss functions with unknown t...
This paper considers the penalized least squares estimators with convex penalties or regularisation ...
Abstract: This paper studies oracle properties of!1-penalized least squares in nonparametric regress...
Abstract. This paper studies oracle properties of `1-penalized estima-tors of a probability density....
37 pagesWe consider the problem of estimating a sparse linear regression vector $\beta^*$ under a ga...
To restrict ourselves to the regime of sparse solutions has become the new paradigm for modern stati...
Dans cette thèse, nous considérons le problème de l’estimation paramétrique de la fonction de régres...
International audienceThis paper considers the problem of recovering a sparse signal representation ...
17 pagesWe consider the linear regression model with Gaussian error. We estimate the unknown paramet...
Scaled sparse linear regression jointly estimates the regression coefficients and noise level in a l...
This paper considers the problem of recovering a sparse signal representation according to a signal ...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...
Abstract—This paper addresses the problem of sparsity penal-ized least squares for applications in s...
With the abundance of large data, sparse penalized regression techniques are commonly used in data a...
In this paper, we investigate the theoretical guarantees of penalized $\lun$ minimization (also call...
This article considers penalized empirical loss minimization of convex loss functions with unknown t...