Logarithmic divergences from optimal transport and R\'enyi geometry
Abstract
Divergences, also known as contrast functions, are distance-like quantities defined on manifolds of non-negative or probability measures. Using the duality in optimal transport, we introduce and study the one-parameter family of L( α)-divergences. It includes the Bregman divergence corresponding to the Euclidean quadratic cost, and the L-divergence introduced by Pal and the author in connection with portfolio theory and a logarithmic cost function. They admit natural generalizations of exponential family that are closely related to the α-family and q-exponential family. In particular, the L( α)-divergences of the corresponding potential functions are R\'enyi divergences. Using this unified framework we prove that the induced geometries are dually projectively flat with constant sectional curvatures, and a generalized Pythagorean theorem holds true. Conversely, we show that if a statistical manifold is dually projectively flat with constant curvature α with α > 0, then it is locally induced by an L( α)-divergence. We define in this context a canonical divergence which extends the one for dually flat manifolds.
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