Feb. 2, 2024, 3:46 p.m. | Francisco Daunas I\~naki Esnaola Samir M. Perlaza H. Vincent Poor

cs.LG updates on arXiv.org arxiv.org

The solution to empirical risk minimization with $f$-divergence regularization (ERM-$f$DR) is presented under mild conditions on $f$. Under such conditions, the optimal measure is shown to be unique. Examples of the solution for particular choices of the function $f$ are presented. Previously known solutions to common regularization choices are obtained by leveraging the flexibility of the family of $f$-divergences. These include the unique solutions to empirical risk minimization with relative entropy regularization (Type-I and Type-II). The analysis of the solution …

cs.it cs.lg divergence erm examples family function math.it regularization risk solution solutions stat.ml

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