The purpose of these lecture notes is to provide an introduction to the general theory of empirical risk minimization with an emphasis on excess risk bounds and oracle inequalities in penalized problems. In recent years, there have been new developments in this area motivated by the study of new classes of methods in machine learning such as large margin classification methods (boosting, kernel machines). The main probabilistic tools involved in the analysis of these problems are concentration and deviation inequalities by Talagrand along with other methods of empirical processes theory (symmetrization inequalities, contraction inequality for Rademacher sums, entropy and generic chaining bounds). Sparse recovery based on l_1-type penalizati...
The optimality and sensitivity of the empirical risk minimization problem with relative entropy regu...
We consider the random design regression model with square loss. We propose a method that aggregates...
We obtain sharp bounds on the convergence rate of Empirical Risk Minimization performed in a convex ...
The purpose of these lecture notes is to provide an introduction to the general theory of empirical ...
These last years, much attention has been paid to the construction of model selection criteria via p...
We investigate the behavior of the empirical minimization algorithm using various methods. We first ...
New classification algorithms based on the notion of 'margin' (e.g. Support Vector Machines, Boostin...
Abstract. A general model is proposed for studying ranking problems. We investigate learning methods...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2006....
15 pagesLet $\cF$ be a set of $M$ classification procedures with values in $[-1,1]$. Given a loss fu...
We present an argument based on the multidimensional and the uniform central limit theorems, proving...
The paper of Vladimir Koltchinskii has been circulating around for several years and already has bec...
We treat two subjects. The first subject is about statistical learning in high-dimension, that is wh...
We investigate to which extent one can recover class probabilities within the empirical risk minimiz...
We give improved constants for data dependent and variance sensitive confidence bounds, called em-pi...
The optimality and sensitivity of the empirical risk minimization problem with relative entropy regu...
We consider the random design regression model with square loss. We propose a method that aggregates...
We obtain sharp bounds on the convergence rate of Empirical Risk Minimization performed in a convex ...
The purpose of these lecture notes is to provide an introduction to the general theory of empirical ...
These last years, much attention has been paid to the construction of model selection criteria via p...
We investigate the behavior of the empirical minimization algorithm using various methods. We first ...
New classification algorithms based on the notion of 'margin' (e.g. Support Vector Machines, Boostin...
Abstract. A general model is proposed for studying ranking problems. We investigate learning methods...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2006....
15 pagesLet $\cF$ be a set of $M$ classification procedures with values in $[-1,1]$. Given a loss fu...
We present an argument based on the multidimensional and the uniform central limit theorems, proving...
The paper of Vladimir Koltchinskii has been circulating around for several years and already has bec...
We treat two subjects. The first subject is about statistical learning in high-dimension, that is wh...
We investigate to which extent one can recover class probabilities within the empirical risk minimiz...
We give improved constants for data dependent and variance sensitive confidence bounds, called em-pi...
The optimality and sensitivity of the empirical risk minimization problem with relative entropy regu...
We consider the random design regression model with square loss. We propose a method that aggregates...
We obtain sharp bounds on the convergence rate of Empirical Risk Minimization performed in a convex ...