PAC-Bayes under potentially heavy tails
Matthew J. Holland
Institute of Scientific and Industrial Research
Osaka University
matthew-h@ar.sanken.osaka-u.ac.jp
Abstract
We derive PAC-Bayesian learning guarantees for heavy-tailed losses, and obtain
a novel optimal Gibbs posterior which enjoys finite-sample excess risk bounds
at logarithmic confidence. Our core technique itself makes ...


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