2021
DOI: 10.48550/arxiv.2111.06826
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Convergence Rates for the MAP of an Exponential Family and Stochastic Mirror Descent -- an Open Problem

Abstract: We consider the problem of upper bounding the expected log-likelihood sub-optimality of the maximum likelihood estimate (MLE), or a conjugate maximum a posteriori (MAP) for an exponential family, in a non-asymptotic way. Surprisingly, we found no general solution to this problem in the literature. In particular, current theories do not hold for a Gaussian or in the interesting few samples regime. After exhibiting various facets of the problem, we show we can interpret the MAP as running stochastic mirror desce… Show more

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