2020
DOI: 10.48550/arxiv.2010.03625
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Online Safety Assurance for Deep Reinforcement Learning

Abstract: Recently, deep learning has been successfully applied to a variety of networking problems. A fundamental challenge is that when the operational environment for a learning-augmented system differs from its training environment, such systems often make badly informed decisions, leading to bad performance. We argue that safely deploying learning-driven systems requires being able to determine, in real-time, whether system behavior is coherent, for the purpose of defaulting to a reasonable heuristic when this is n… Show more

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