Ensemble sampling for linear bandits: small ensembles suffice
Abstract
We provide the first useful and rigorous analysis of ensemble sampling for the stochastic linear bandit setting. In particular, we show that, under standard assumptions, for a d-dimensional stochastic linear bandit with an interaction horizon T, ensemble sampling with an ensemble of size of order d T incurs regret at most of the order (d T)5/2 T. Ours is the first result in any structured setting not to require the size of the ensemble to scale linearly with T -- which defeats the purpose of ensemble sampling -- while obtaining near T order regret. Our result is also the first to allow for infinite action sets.
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