2022
DOI: 10.48550/arxiv.2205.14237
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Provably Sample-Efficient RL with Side Information about Latent Dynamics

Abstract: We study reinforcement learning (RL) in settings where observations are high-dimensional, but where an RL agent has access to abstract knowledge about the structure of the state space, as is the case, for example, when a robot is tasked to go to a specific room in a building using observations from its own camera, while having access to the floor plan. We formalize this setting as transfer reinforcement learning from an abstract simulator, which we assume is deterministic (such as a simple model of moving arou… Show more

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