Given a dictionary of $M_n$ initial estimates of the unknown true regression function, we aim to construct linearly aggregated estimators that target the best performance among all the linear combinations under a sparse $q$-norm ($0 \leq q \leq 1$) constraint on the linear coefficients. Besides identifying the optimal rates of aggregation for these $\ell_q$-aggregation problems, our multi-directional (or universal) aggregation strategies by model mixing or model selection achieve the optimal rates simultaneously over the full range of $0\leq q \leq 1$ for general $M_n$ and upper bound $t_n$ of the $q$-norm. Both random and fixed designs, with known or unknown error variance, are handled, and the $\ell_q$-aggregations examined in this work c...
We consider the random design regression model with square loss. We propose a method that aggregates...
We treat two subjects. The first subject is about statistical learning in high-dimension, that is wh...
To appear in Mathematical Methods of StatisticsWe study the problem of linear and convex aggregation...
Given a dictionary of $M_n$ initial estimates of the unknown true regression function, we aim to con...
Abstract: Given a dictionary of Mn initial estimates of the unknown true regression func-tion, we ai...
Given a dictionary of Mn initial estimates of the unknown true regression function, we aim to constr...
It is generally believed that ensemble approaches, which combine multiple algorithms or models, can ...
Given a finite family of functions, the goal of model selection aggrega-tion is to construct a proce...
We consider the problem of aggregating a general collection of affine estimators for fixed design re...
We study the performances of an adaptive procedure based on a convex combination, with data-driven w...
In this paper, we consider the problem of hyper-sparse aggregation. Namely, given a dictionary F = {...
This paper studies statistical aggregation procedures in the regression setting. A motivating factor...
We consider a general statistical linear inverse problem, where the solution is represented via a kn...
In this thesis we deal with aggregationprocedures under the margin assumption. We prove that the mar...
We consider a general supervised learning problem with strongly convex and Lipschitz loss and study ...
We consider the random design regression model with square loss. We propose a method that aggregates...
We treat two subjects. The first subject is about statistical learning in high-dimension, that is wh...
To appear in Mathematical Methods of StatisticsWe study the problem of linear and convex aggregation...
Given a dictionary of $M_n$ initial estimates of the unknown true regression function, we aim to con...
Abstract: Given a dictionary of Mn initial estimates of the unknown true regression func-tion, we ai...
Given a dictionary of Mn initial estimates of the unknown true regression function, we aim to constr...
It is generally believed that ensemble approaches, which combine multiple algorithms or models, can ...
Given a finite family of functions, the goal of model selection aggrega-tion is to construct a proce...
We consider the problem of aggregating a general collection of affine estimators for fixed design re...
We study the performances of an adaptive procedure based on a convex combination, with data-driven w...
In this paper, we consider the problem of hyper-sparse aggregation. Namely, given a dictionary F = {...
This paper studies statistical aggregation procedures in the regression setting. A motivating factor...
We consider a general statistical linear inverse problem, where the solution is represented via a kn...
In this thesis we deal with aggregationprocedures under the margin assumption. We prove that the mar...
We consider a general supervised learning problem with strongly convex and Lipschitz loss and study ...
We consider the random design regression model with square loss. We propose a method that aggregates...
We treat two subjects. The first subject is about statistical learning in high-dimension, that is wh...
To appear in Mathematical Methods of StatisticsWe study the problem of linear and convex aggregation...