15 pagesLet $\cF$ be a set of $M$ classification procedures with values in $[-1,1]$. Given a loss function, we want to construct a procedure which mimics at the best possible rate the best procedure in $\cF$. This fastest rate is called optimal rate of aggregation. Considering a continuous scale of loss functions with various types of convexity, we prove that optimal rates of aggregation can be either $((\log M)/n)^{1/2}$ or $(\log M)/n$. We prove that, if all the $M$ classifiers are binary, the (penalized) Empirical Risk Minimization procedures are suboptimal (even under the margin/low noise condition) when the loss function is somewhat more than convex, whereas, in that case, aggregation procedures with exponential weights achieve the opt...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
It is generally believed that ensemble approaches, which combine multiple algorithms or models, can ...
The purpose of these lecture notes is to provide an introduction to the general theory of empirical ...
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...
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...
Given a finite set F of estimators, the problem of aggregation is to construct a new estimator whose...
In this thesis we deal with aggregationprocedures under the margin assumption. We prove that the mar...
We study the performance of empirical risk minimization (ERM), with respect to the quadratic risk, i...
We introduce an alternative to the notion of ‘fast rate’ in Learning Theory, which coincides with th...
Given a finite class of functions F, the problem of aggregation is to construct a procedure with a r...
accepted to COLT 2006We consider the problem of optimality, in a minimax sense, and adaptivity to th...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
We study how closely the optimal Bayes error rate can be approximately reached using a classificatio...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
It is generally believed that ensemble approaches, which combine multiple algorithms or models, can ...
The purpose of these lecture notes is to provide an introduction to the general theory of empirical ...
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...
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...
Given a finite set F of estimators, the problem of aggregation is to construct a new estimator whose...
In this thesis we deal with aggregationprocedures under the margin assumption. We prove that the mar...
We study the performance of empirical risk minimization (ERM), with respect to the quadratic risk, i...
We introduce an alternative to the notion of ‘fast rate’ in Learning Theory, which coincides with th...
Given a finite class of functions F, the problem of aggregation is to construct a procedure with a r...
accepted to COLT 2006We consider the problem of optimality, in a minimax sense, and adaptivity to th...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
We study how closely the optimal Bayes error rate can be approximately reached using a classificatio...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
It is generally believed that ensemble approaches, which combine multiple algorithms or models, can ...
The purpose of these lecture notes is to provide an introduction to the general theory of empirical ...