A Unified Theory of Supervised Online Learnability
Abstract: We study the online learnability of hypothesis classes with respect to arbitrary, but bounded loss functions. No characterization of online learnability is known at this level of generality. In this paper, we close this gap by showing that existing techniques can be used to characterize any online learning problem with a bounded loss function. Along the way, we give a new scale-sensitive combinatorial dimension, named the Sequential Minimax dimension, that generalizes all existing dimensions in online learning theory and provides upper and lower bounds on the minimax value.
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Submission Number: 20
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