Emergent Mind

Lower-bounds on the Bayesian Risk in Estimation Procedures via $f$-Divergences

(2202.02557)
Published Feb 5, 2022 in cs.IT , math.IT , math.PR , math.ST , and stat.TH

Abstract

We consider the problem of parameter estimation in a Bayesian setting and propose a general lower-bound that includes part of the family of $f$-Divergences. The results are then applied to specific settings of interest and compared to other notable results in the literature. In particular, we show that the known bounds using Mutual Information can be improved by using, for example, Maximal Leakage, Hellinger divergence, or generalizations of the Hockey-Stick divergence.

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