Online Learning with Low Rank Experts

Abstract
We consider the problem of prediction with expert advice when the losses of the experts have low-dimensional structure: they are restricted to an unknown -dimensional subspace. We devise algorithms with regret bounds that are independent of the number of experts and depend only on the rank . For the stochastic model we show a tight bound of , and extend it to a setting of an approximate subspace. For the adversarial model we show an upper bound of and a lower bound of .
View on arXivComments on this paper