2021
DOI: 10.48550/arxiv.2106.06931
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Learning on Abstract Domains: A New Approach for Verifiable Guarantee in Reinforcement Learning

Peng Jin,
Min Zhang,
Jianwen Li
et al.

Abstract: Formally verifying Deep Reinforcement Learning (DRL) systems is a challenging task due to the dynamic continuity of system behaviors and the black-box feature of embedded neural networks. In this paper, we propose a novel abstraction-based approach to train DRL systems on finite abstract domains instead of concrete system states. It yields neural networks whose input states are finite, making hosting DRL systems directly verifiable using model checking techniques. Our approach is orthogonal to existing DRL alg… Show more

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