Given a finite set F of estimators, the problem of aggregation is to construct a new estimator whose risk is as close as possible to the risk of the best estimator in F. It was conjectured that empirical minimization performed in the convex hull of F is an optimal aggregation method, but we show that this conjecture is false. Despite that, we prove that empirical minimization in the convex hull of a well chosen, empirically determined subset of F is an optimal aggregation method
To appear in Mathematical Methods of StatisticsWe study the problem of linear and convex aggregation...
The empirical likelihood ratio is not defined when the null vector does not belong to the convex hul...
This paper studies statistical aggregation procedures in the regression setting. A motivating factor...
We study the performances of the empirical risk minimization procedure (ERM for short), with respect...
International audienceLet $F$ be a finite model of cardinality $M$ and denote by $\conv(F)$ its conv...
We study the performance of empirical risk minimization (ERM), with respect to the quadratic risk, i...
15 pagesLet $\cF$ be a set of $M$ classification procedures with values in $[-1,1]$. Given a loss fu...
International audienceIn the same spirit as Tsybakov (2003), we define the optimality of an aggregat...
Given a finite class of functions F, the problem of aggregation is to construct a procedure with a r...
It is generally believed that ensemble approaches, which combine multiple algorithms or models, can ...
International audienceWe consider the problem of point aggregation and adaptive estimation from indi...
Given a finite collection of estimators or classifiers, we study the problem of model selection type...
Abstract: Given a finite collection of estimators or classifiers, we study the problem of model sele...
In this thesis we deal with aggregationprocedures under the margin assumption. We prove that the mar...
We introduce an alternative to the notion of ‘fast rate’ in Learning Theory, which coincides with th...
To appear in Mathematical Methods of StatisticsWe study the problem of linear and convex aggregation...
The empirical likelihood ratio is not defined when the null vector does not belong to the convex hul...
This paper studies statistical aggregation procedures in the regression setting. A motivating factor...
We study the performances of the empirical risk minimization procedure (ERM for short), with respect...
International audienceLet $F$ be a finite model of cardinality $M$ and denote by $\conv(F)$ its conv...
We study the performance of empirical risk minimization (ERM), with respect to the quadratic risk, i...
15 pagesLet $\cF$ be a set of $M$ classification procedures with values in $[-1,1]$. Given a loss fu...
International audienceIn the same spirit as Tsybakov (2003), we define the optimality of an aggregat...
Given a finite class of functions F, the problem of aggregation is to construct a procedure with a r...
It is generally believed that ensemble approaches, which combine multiple algorithms or models, can ...
International audienceWe consider the problem of point aggregation and adaptive estimation from indi...
Given a finite collection of estimators or classifiers, we study the problem of model selection type...
Abstract: Given a finite collection of estimators or classifiers, we study the problem of model sele...
In this thesis we deal with aggregationprocedures under the margin assumption. We prove that the mar...
We introduce an alternative to the notion of ‘fast rate’ in Learning Theory, which coincides with th...
To appear in Mathematical Methods of StatisticsWe study the problem of linear and convex aggregation...
The empirical likelihood ratio is not defined when the null vector does not belong to the convex hul...
This paper studies statistical aggregation procedures in the regression setting. A motivating factor...