Publication | Open Access
Finite-Time Analysis of Kernelised Contextual Bandits
91
Citations
20
References
2013
Year
Mathematical ProgrammingArtificial IntelligenceEngineeringMachine LearningContextual BanditsAlgorithmic LearningInformation RetrievalData ScienceRobot LearningDecision TheoryOnline Reward MaximisationOnline AlgorithmLinear KernelSequential Decision MakingProbability TheoryComputer ScienceExploration V ExploitationUcb AlgorithmContextual BanditStochastic OptimizationStatistical Inference
We tackle the problem of online reward maximisation over a large finite set of actions described by their contexts. We focus on the case when the number of actions is too big to sample all of them even once. However we assume that we have access to the similarities between actions' contexts and that the expected reward is an arbitrary linear function of the contexts' images in the related reproducing kernel Hilbert space (RKHS). We propose KernelUCB, a kernelised UCB algorithm, and give a cumulative regret bound through a frequentist analysis. For contextual bandits, the related algorithm GP-UCB turns out to be a special case of our algorithm, and our finite-time analysis improves the regret bound of GP-UCB for the agnostic case, both in the terms of the kernel-dependent quantity and the RKHS norm of the reward function. Moreover, for the linear kernel, our regret bound matches the lower bound for contextual linear bandits.
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