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Optimally approximating exponential families

2 November 2011
Johannes Rauh
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Abstract

This article studies exponential families E\mathcal{E}E on finite sets such that the information divergence D(P∥E)D(P\|\mathcal{E})D(P∥E) of an arbitrary probability distribution from E\mathcal{E}E is bounded by some constant D>0D>0D>0. A particular class of low-dimensional exponential families that have low values of DDD can be obtained from partitions of the state space. The main results concern optimality properties of these partition exponential families. Exponential families where D=log⁡(2)D=\log(2)D=log(2) are studied in detail. This case is special, because if D<log⁡(2)D<\log(2)D<log(2), then E\mathcal{E}E contains all probability measures with full support.

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