LGAIMLApr 23, 2024

The Power of Resets in Online Reinforcement Learning

MIT
arXiv:2404.15417v213 citationsh-index: 57NIPS
Originality Highly original
AI Analysis

This work addresses the challenge of exploiting simulator access in RL for researchers and practitioners, offering new statistical guarantees that reduce representation requirements compared to existing methods.

The paper tackles the problem of sample-efficient online reinforcement learning in high-dimensional domains by introducing local simulator access, which allows resetting to previously observed states, and shows that MDPs with low coverability can be learned with only Q*-realizability, making the Exogenous Block MDP problem tractable under this protocol.

Simulators are a pervasive tool in reinforcement learning, but most existing algorithms cannot efficiently exploit simulator access -- particularly in high-dimensional domains that require general function approximation. We explore the power of simulators through online reinforcement learning with {local simulator access} (or, local planning), an RL protocol where the agent is allowed to reset to previously observed states and follow their dynamics during training. We use local simulator access to unlock new statistical guarantees that were previously out of reach: - We show that MDPs with low coverability (Xie et al. 2023) -- a general structural condition that subsumes Block MDPs and Low-Rank MDPs -- can be learned in a sample-efficient fashion with only $Q^{\star}$-realizability (realizability of the optimal state-value function); existing online RL algorithms require significantly stronger representation conditions. - As a consequence, we show that the notorious Exogenous Block MDP problem (Efroni et al. 2022) is tractable under local simulator access. The results above are achieved through a computationally inefficient algorithm. We complement them with a more computationally efficient algorithm, RVFS (Recursive Value Function Search), which achieves provable sample complexity guarantees under a strengthened statistical assumption known as pushforward coverability. RVFS can be viewed as a principled, provable counterpart to a successful empirical paradigm that combines recursive search (e.g., MCTS) with value function approximation.

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