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Equivalence of the Empirical Risk Minimization to Regularization on the Family of f-Divergences

Abstract

The solution to empirical risk minimization with ff-divergence regularization (ERM-ffDR) is presented under mild conditions on ff. Under such conditions, the optimal measure is shown to be unique. Examples of the solution for particular choices of the function ff are presented. Previously known solutions to common regularization choices are obtained by leveraging the flexibility of the family of ff-divergences. These include the unique solutions to empirical risk minimization with relative entropy regularization (Type-I and Type-II). The analysis of the solution unveils the following properties of ff-divergences when used in the ERM-ffDR problem: i)i\bigl) ff-divergence regularization forces the support of the solution to coincide with the support of the reference measure, which introduces a strong inductive bias that dominates the evidence provided by the training data; and ii)ii\bigl) any ff-divergence regularization is equivalent to a different ff-divergence regularization with an appropriate transformation of the empirical risk function.

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