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Online learning with exponential weights in metric spaces (2103.14389v1)
Published 26 Mar 2021 in stat.ML, cs.LG, math.MG, math.ST, and stat.TH
Abstract: This paper addresses the problem of online learning in metric spaces using exponential weights. We extend the analysis of the exponentially weighted average forecaster, traditionally studied in a Euclidean settings, to a more abstract framework. Our results rely on the notion of barycenters, a suitable version of Jensen's inequality and a synthetic notion of lower curvature bound in metric spaces known as the measure contraction property. We also adapt the online-to-batch conversion principle to apply our results to a statistical learning framework.
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