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Generalization Error of ff-Divergence Stabilized Algorithms via Duality

Main:5 Pages
Bibliography:1 Pages
Appendix:21 Pages
Abstract

The solution to empirical risk minimization with ff-divergence regularization (ERM-ffDR) is extended to constrained optimization problems, establishing conditions for equivalence between the solution and constraints. A dual formulation of ERM-ffDR is introduced, providing a computationally efficient method to derive the normalization function of the ERM-ffDR solution. This dual approach leverages the Legendre-Fenchel transform and the implicit function theorem, enabling explicit characterizations of the generalization error for general algorithms under mild conditions, and another for ERM-ffDR solutions.

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