2021
DOI: 10.48550/arxiv.2111.08761
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Stronger Generalization Guarantees for Robot Learning by Combining Generative Models and Real-World Data

Abstract: We are motivated by the problem of learning policies for robotic systems with rich sensory inputs (e.g., vision) in a manner that allows us to guarantee generalization to environments unseen during training. We provide a framework for providing such generalization guarantees by leveraging a finite dataset of real-world environments in combination with a (potentially inaccurate) generative model of environments.The key idea behind our approach is to utilize the generative model in order to implicitly specify a … Show more

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