Bilinear Exponential Family of MDPs: Frequentist Regret Bound with Tractable Exploration and Planning
Reda Ouhamma (CRIStAL), Debabrota Basu (CRIStAL), Odalric-Ambrym, Maillard (CRIStAL)

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Abstract
We study the problem of episodic reinforcement learning in continuous state-action spaces with unknown rewards and transitions. Specifically, we consider the setting where the rewards and transitions are modeled using parametric bilinear exponential families. We propose an algorithm, BEF-RLSVI, that a) uses penalized maximum likelihood estimators to learn the unknown parameters, b) injects a calibrated Gaussian noise in the parameter of rewards to ensure exploration, and c) leverages linearity of the exponential family with respect to an underlying RKHS to perform tractable planning. We further provide a frequentist regret analysis of BEF-RLSVI that yields an upper bound of , where is the dimension of the parameters, is the episode length, and is the number of episodes. Our analysis improves the existing bounds for the bilinear…
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Taxonomy
TopicsReinforcement Learning in Robotics · Advanced Bandit Algorithms Research · Receptor Mechanisms and Signaling
