Bounded Regret for Finite-Armed Structured Bandits

NeurIPS 2014 Tor LattimoreRemi Munos

We study a new type of K-armed bandit problem where the expected return of one arm may depend on the returns of other arms. We present a new algorithm for this general class of problems and show that under certain circumstances it is possible to achieve finite expected cumulative regret... (read more)

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