Online learning with exponential weights in metric spaces with the measure contraction property

By Quentin Paris

Appears in collection : 2022 - T3 - WS3 - Measure-theoretic Approaches and Optimal Transportation in Statistics

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.

Information about the video

  • Date of publication 05/04/2024
  • Institution IHP
  • Licence CC BY-NC-ND
  • Language English
  • Format MP4

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