58p.We consider the estimation of a bounded regression function with nonparametric heteroscedastic noise. We are interested by the true and empirical excess risks of the least-squares estimator on a nite-dimensional vector space. For these quantities, we give upper and lower bounds in probability that are optimal at the rst order. Moreover, these bounds show the equivalence between the true and empirical excess risks when, among other things, the least-squares estimator is consistent in sup-norm towards the projection of the regression function onto the considered model. Consistency in sup-norm is then proved for suitable histogram models and more general models of piecewise polynomials that are endowed with a localized basis structure
Abstract—The prospect of carrying out data mining on cheaply compressed versions of high dimensional...
This thesis is devoted to the theoritical analysis of a method of calibration of penalties for model...
Precis: This paper compares the small sample empirical size, power and incidence of inconclusiveness...
58p.We consider the estimation of a bounded regression function with nonparametric heteroscedastic n...
We consider the estimation of a regression function with random design and heteroscedastic noise in ...
We consider the problem of choosing between several models in least-squares regression with heterosc...
International audienceWe consider the problem of learning, from K data, a regression function in a l...
We study the performance of empirical risk minimization on the $p$-norm linear regression problem fo...
This paper investigates robust versions of the general empirical risk minimization algorithm, one of...
Statistical Learning Theory studies the problem of learning an unknown relationship between observed...
29 pagesInternational audienceWe consider the problem of robustly predicting as well as the best lin...
International audienceWe investigate the optimality for model selection of the so-called slope heuri...
This thesis is devoted to the theoritical analysis of a method of calibration of penalties for model...
International audiencePenalization procedures often suffer from their dependence on multiplying fact...
78We consider the problem of predicting as well as the best linear combination of d given functions ...
Abstract—The prospect of carrying out data mining on cheaply compressed versions of high dimensional...
This thesis is devoted to the theoritical analysis of a method of calibration of penalties for model...
Precis: This paper compares the small sample empirical size, power and incidence of inconclusiveness...
58p.We consider the estimation of a bounded regression function with nonparametric heteroscedastic n...
We consider the estimation of a regression function with random design and heteroscedastic noise in ...
We consider the problem of choosing between several models in least-squares regression with heterosc...
International audienceWe consider the problem of learning, from K data, a regression function in a l...
We study the performance of empirical risk minimization on the $p$-norm linear regression problem fo...
This paper investigates robust versions of the general empirical risk minimization algorithm, one of...
Statistical Learning Theory studies the problem of learning an unknown relationship between observed...
29 pagesInternational audienceWe consider the problem of robustly predicting as well as the best lin...
International audienceWe investigate the optimality for model selection of the so-called slope heuri...
This thesis is devoted to the theoritical analysis of a method of calibration of penalties for model...
International audiencePenalization procedures often suffer from their dependence on multiplying fact...
78We consider the problem of predicting as well as the best linear combination of d given functions ...
Abstract—The prospect of carrying out data mining on cheaply compressed versions of high dimensional...
This thesis is devoted to the theoritical analysis of a method of calibration of penalties for model...
Precis: This paper compares the small sample empirical size, power and incidence of inconclusiveness...