The optimality and sensitivity of the empirical risk minimization problem with relative entropy regularization (ERM-RER) are investigated for the case in which the reference is a sigma-finite measure instead of a probability measure. This generalization allows for a larger degree of flexibility in the incorporation of prior knowledge over the set of models. In this setting, the interplay of the regularization parameter, the reference measure, the risk function, and the empirical risk induced by the solution of the ERM-RER problem is characterized. This characterization yields necessary and sufficient conditions for the existence of a regularization parameter that achieves an arbitrarily small empirical risk with arbitrarily high probability...
Importance sampling of target probability distributions belonging to a given convex class is conside...
In this paper, we study the generalization performance of global minima for implementing empirical r...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
International audienceThe optimality and sensitivity of the empirical risk minimization problem with...
32 pages (and a 36-page appendix), submitted to the Journal of Machine Learning Research (JMLR) on T...
In this version minor edition is made to correct typos.The empirical risk minimization (ERM) problem...
This version contains the editions suggested by reviewers of the IEEE Transactions in Information Th...
This report presents the solution to the empirical risk minimization with $f$-divergence regularizat...
The principle of minimum cross-entropy is an inference procedure for specifying an updated probabili...
We consider the random design regression model with square loss. We propose a method that aggregates...
The paper describes a relative entropy procedure for imposing moment restrictions on simulated fore...
In this thesis, we work on a generalization of the entropy regularized optimal transport problem, wi...
Recently a parametric family of fairness metrics to quantify algorithmic fairness has been proposed ...
International audienceThis chapter focuses on the notions of entropy and of maximum entropy distribu...
The purpose of these lecture notes is to provide an introduction to the general theory of empirical ...
Importance sampling of target probability distributions belonging to a given convex class is conside...
In this paper, we study the generalization performance of global minima for implementing empirical r...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
International audienceThe optimality and sensitivity of the empirical risk minimization problem with...
32 pages (and a 36-page appendix), submitted to the Journal of Machine Learning Research (JMLR) on T...
In this version minor edition is made to correct typos.The empirical risk minimization (ERM) problem...
This version contains the editions suggested by reviewers of the IEEE Transactions in Information Th...
This report presents the solution to the empirical risk minimization with $f$-divergence regularizat...
The principle of minimum cross-entropy is an inference procedure for specifying an updated probabili...
We consider the random design regression model with square loss. We propose a method that aggregates...
The paper describes a relative entropy procedure for imposing moment restrictions on simulated fore...
In this thesis, we work on a generalization of the entropy regularized optimal transport problem, wi...
Recently a parametric family of fairness metrics to quantify algorithmic fairness has been proposed ...
International audienceThis chapter focuses on the notions of entropy and of maximum entropy distribu...
The purpose of these lecture notes is to provide an introduction to the general theory of empirical ...
Importance sampling of target probability distributions belonging to a given convex class is conside...
In this paper, we study the generalization performance of global minima for implementing empirical r...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...