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Poster
in
Workshop: Deep Reinforcement Learning

Exponential Family Model-Based Reinforcement Learning via Score Matching

Gene Li · Junbo Li · Nathan Srebro · Zhaoran Wang · Zhuoran Yang


Abstract: We propose a optimistic model-based algorithm, dubbed SMRL, for finite-horizon episodic reinforcement learning (RL) when the transition model is specified by exponential family distributions with d parameters and the reward is bounded and known. SMRL uses score matching, an unnormalized density estimation technique that enables efficient estimation of the model parameter by ridge regression. SMRL achieves O~(dH3T) regret, where H is the length of each episode and T is the total number of interactions.

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