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arXiv:2011.01217 [cs.LG]AbstractReferencesReviewsResources

Prediction against limited adversary

Erhan Bayraktar, Ibrahim Ekren, Xin Zhang

Published 2020-10-31Version 1

We study the problem of prediction with expert advice with adversarial corruption where the adversary can at most corrupt one expert. Using tools from viscosity theory, we characterize the long-time behavior of the value function of the game between the forecaster and the adversary. We provide lower and upper bounds for the growth rate of regret without relying on a comparison result. We show that depending on the description of regret, the limiting behavior of the game can significantly differ.

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