Online Learning with an Almost Perfect Expert

Abstract

We study the multiclass online learning problem where a forecaster makes a sequence of predictions using the advice of n experts. Our main contribution is to analyze the regime where the best expert makes at most b mistakes and to show that when b = o(4n), the expected number of mistakes made by the optimal forecaster is at most 4n + o(4n). We also describe an adversary strategy showing that this bound is tight and that the worst case is attained for binary prediction.

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