Nearly Optimal Latent State Decoding in Block MDPs

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We consider the problem of model estimation in episodic Block MDPs. In these MDPs, the decision maker has access to rich observations or contexts generated from a small number of latent states. We are interested in estimating the latent state decoding function (the mapping from the observations to latent states) based on data generated under a fixed behavior policy. We derive an information-theoretical lower bound on the error rate for estimating this function and present an algorithm approaching this fundamental limit. In turn, our algorithm also provides estimates of all the components of the MDP. We apply our results to the problem of learning near-optimal policies in the reward-free setting. Based on our efficient model estimation algorithm, we show that we can infer a policy converging (as the number of collected samples grows large) to the optimal policy at the best possible asymptotic rate. Our analysis provides necessary and sufficient conditions under which exploiting the block structure yields improvements in the sample complexity for identifying near-optimal policies. When these conditions are met, the sample complexity in the minimax reward-free setting is improved by a multiplicative factor n, where n is the number of contexts.
Publisher
ML Research Press
Issue Date
2023-04-26
Language
English
Citation

26th International Conference on Artificial Intelligence and Statistics, AISTATS 2023, pp.2805 - 2904

URI
http://hdl.handle.net/10203/316037
Appears in Collection
AI-Conference Papers(학술대회논문)
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