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 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 regret, where is the length of each episode and is the total number of interactions.
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