International audienceIn a wide range of statistical learning problems such as ranking, clustering or metric learning among others, the risk is accurately estimated by U-statistics of degree d ≥ 1, i.e. functionals of the training data with low variance that take the form of averages over k-tuples. From a computational perspective, the calculation of such statistics is highly expensive even for a moderate sample size n, as it requires averaging O(n^d) terms. This makes learning procedures relying on the optimization of such data functionals hardly feasible in practice. It is the major goal of this paper to show that, strikingly, such empirical risks can be replaced by drastically computationally simpler Monte-Carlo estimates based on O(n) t...
International audienceIn certain situations that shall be undoubtedly more and more common in the Bi...
Spectral risk objectives - also called $L$-risks - allow for learning systems to interpolate between...
Empirical risk minimization is recognized as a special form in standard convex optimization. When us...
International audienceIn a wide range of statistical learning problems such as ranking, clustering o...
International audienceIn many learning problems, ranging from clustering to ranking through metric l...
International audienceIn many learning problems, ranging from clustering to ranking through metric l...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
32 pagesThe problem of ranking/ordering instances, instead of simply classifying them, has recently ...
This paper investigates robust versions of the general empirical risk minimization algorithm, one of...
Abstract The generalization ability of minimizers of the empirical risk in the context of binary cla...
Dans ce manuscrit, nous présentons et étudions des stratégies d’échantillonnage appliquées, à problè...
Abstract. A general model is proposed for studying ranking problems. We investigate learning methods...
L’explosion récente des volumes de données disponibles a fait de la complexité algorithmique un e...
The effect of errors in variables in empirical minimization is investigated. Given a loss $l$ and a ...
International audienceIn certain situations that shall be undoubtedly more and more common in the Bi...
Spectral risk objectives - also called $L$-risks - allow for learning systems to interpolate between...
Empirical risk minimization is recognized as a special form in standard convex optimization. When us...
International audienceIn a wide range of statistical learning problems such as ranking, clustering o...
International audienceIn many learning problems, ranging from clustering to ranking through metric l...
International audienceIn many learning problems, ranging from clustering to ranking through metric l...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
32 pagesThe problem of ranking/ordering instances, instead of simply classifying them, has recently ...
This paper investigates robust versions of the general empirical risk minimization algorithm, one of...
Abstract The generalization ability of minimizers of the empirical risk in the context of binary cla...
Dans ce manuscrit, nous présentons et étudions des stratégies d’échantillonnage appliquées, à problè...
Abstract. A general model is proposed for studying ranking problems. We investigate learning methods...
L’explosion récente des volumes de données disponibles a fait de la complexité algorithmique un e...
The effect of errors in variables in empirical minimization is investigated. Given a loss $l$ and a ...
International audienceIn certain situations that shall be undoubtedly more and more common in the Bi...
Spectral risk objectives - also called $L$-risks - allow for learning systems to interpolate between...
Empirical risk minimization is recognized as a special form in standard convex optimization. When us...