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arxiv: 1810.05188 · v2 · pith:FTSW45DHnew · submitted 2018-10-11 · 📊 stat.ML · cs.LG

Fighting Contextual Bandits with Stochastic Smoothing

classification 📊 stat.ML cs.LG
keywords algorithmboundsperturbationalgorithmsboundcontextualdistributionsexp4
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We introduce a new stochastic smoothing perspective to study adversarial contextual bandit problems. We propose a general algorithm template that represents random perturbation based algorithms and identify several perturbation distributions that lead to strong regret bounds. Using the idea of smoothness, we provide an $O(\sqrt{T})$ zero-order bound for the vanilla algorithm and an $O(L^{*2/3}_{T})$ first-order bound for the clipped version. These bounds hold when the algorithms use with a variety of distributions that have a bounded hazard rate. Our algorithm template includes EXP4 as a special case corresponding to the Gumbel perturbation. Our regret bounds match existing results for EXP4 without relying on the specific properties of the algorithm.

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