Jeremiah Birrell, P. Dupuis, M. Katsoulakis, L. Rey-Bellet, Jie Wang
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Variational Representations and Neural Network Estimation of Rényi Divergences
We derive a new variational formula for the R{e}nyi family of divergences, $R_\alpha(Q\|P)$, between probability measures $Q$ and $P$. Our result generalizes the classical Donsker-Varadhan variational formula for the Kullback-Leibler divergence. We further show that this R{e}nyi variational formula holds over a range of function spaces; this leads to a formula for the optimizer under very weak assumptions and is also key in our development of a consistency theory for R{e}nyi divergence estimators. By applying this theory to neural network estimators, we show that if a neural network family satisfies one of several strengthened versions of the universal approximation property then the corresponding R{e}nyi divergence estimator is consistent. In contrast to likelihood-ratio based methods, our estimators involve only expectations under $Q$ and $P$ and hence are more effective in high dimensional systems. We illustrate this via several numerical examples of neural network estimation in systems of up to 5000 dimensions.