International audienceThis paper introduces and addresses a wide class of stochastic bandit problems where the function mapping the arm to the corresponding reward exhibits some known structural properties. Most existing structures (e.g. linear, Lipschitz, unimodal, combinatorial, dueling, . . . ) are covered by our framework. We derive an asymptotic instance-specific regret lower bound for these problems, and develop OSSB, an algorithm whose regret matches this fundamental limit. OSSB is not based on the classical principle of "optimism in the face of uncertainty" or on Thompson sampling, and rather aims at matching the minimal exploration rates of sub-optimal arms as characterized in the derivation of the regret lower bound. We illustrate...
We improve the theoretical analysis and empirical performance of algorithms for the stochastic multi...
We consider stochastic bandit problems with a continuum set of arms and where the expected re-ward i...
We consider the problem of online learning in misspecified linear stochastic multi-armed bandit prob...
International audienceThis paper introduces and addresses a wide class of stochastic bandit problems...
We consider stochastic multi-armed bandit problems where the expected reward is a Lipschitz function...
International audienceIn the classical multi-armed bandit problem, d arms are available to the decis...
International audienceIn the classical multi-armed bandit problem, d arms are available to the decis...
International audienceWe consider stochastic multi-armed bandit problems where the expected reward i...
10+18 pages.International audienceWe study reward maximisation in a wide class of structured stochas...
In this thesis we address the multi-armed bandit (MAB) problem with stochastic rewards and correlate...
Regret minimisation in stochastic multi-armed bandits is a well-studied problem, for which several o...
We consider stochastic multi-armed bandit problems where the expected reward is a Lipschitzfunction ...
We study reward maximisation in a wide class of structured stochastic multi-armed bandit problems, w...
We study stochastic linear payoff bandit prob-lems and give a simple, computationally ef-ficient alg...
We improve the theoretical analysis and empirical performance of algorithms for the stochastic multi...
We improve the theoretical analysis and empirical performance of algorithms for the stochastic multi...
We consider stochastic bandit problems with a continuum set of arms and where the expected re-ward i...
We consider the problem of online learning in misspecified linear stochastic multi-armed bandit prob...
International audienceThis paper introduces and addresses a wide class of stochastic bandit problems...
We consider stochastic multi-armed bandit problems where the expected reward is a Lipschitz function...
International audienceIn the classical multi-armed bandit problem, d arms are available to the decis...
International audienceIn the classical multi-armed bandit problem, d arms are available to the decis...
International audienceWe consider stochastic multi-armed bandit problems where the expected reward i...
10+18 pages.International audienceWe study reward maximisation in a wide class of structured stochas...
In this thesis we address the multi-armed bandit (MAB) problem with stochastic rewards and correlate...
Regret minimisation in stochastic multi-armed bandits is a well-studied problem, for which several o...
We consider stochastic multi-armed bandit problems where the expected reward is a Lipschitzfunction ...
We study reward maximisation in a wide class of structured stochastic multi-armed bandit problems, w...
We study stochastic linear payoff bandit prob-lems and give a simple, computationally ef-ficient alg...
We improve the theoretical analysis and empirical performance of algorithms for the stochastic multi...
We improve the theoretical analysis and empirical performance of algorithms for the stochastic multi...
We consider stochastic bandit problems with a continuum set of arms and where the expected re-ward i...
We consider the problem of online learning in misspecified linear stochastic multi-armed bandit prob...