LGOCMLMar 11, 2024

Scalable Online Exploration via Coverability

arXiv:2403.06571v210 citationsh-index: 10ICML
Originality Highly original
AI Analysis

This addresses the problem of scalable exploration in reinforcement learning for researchers and practitioners, offering a novel framework with theoretical guarantees and practical algorithms.

The paper tackles the challenge of exploration in reinforcement learning for high-dimensional domains by proposing exploration objectives as a framework, introducing $L_1$-Coverage, which enables efficient online algorithms for MDPs with low coverability, and empirically shows it drives off-the-shelf methods to explore effectively.

Exploration is a major challenge in reinforcement learning, especially for high-dimensional domains that require function approximation. We propose exploration objectives -- policy optimization objectives that enable downstream maximization of any reward function -- as a conceptual framework to systematize the study of exploration. Within this framework, we introduce a new objective, $L_1$-Coverage, which generalizes previous exploration schemes and supports three fundamental desiderata: 1. Intrinsic complexity control. $L_1$-Coverage is associated with a structural parameter, $L_1$-Coverability, which reflects the intrinsic statistical difficulty of the underlying MDP, subsuming Block and Low-Rank MDPs. 2. Efficient planning. For a known MDP, optimizing $L_1$-Coverage efficiently reduces to standard policy optimization, allowing flexible integration with off-the-shelf methods such as policy gradient and Q-learning approaches. 3. Efficient exploration. $L_1$-Coverage enables the first computationally efficient model-based and model-free algorithms for online (reward-free or reward-driven) reinforcement learning in MDPs with low coverability. Empirically, we find that $L_1$-Coverage effectively drives off-the-shelf policy optimization algorithms to explore the state space.

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