2022
DOI: 10.48550/arxiv.2210.05931
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Explaining Online Reinforcement Learning Decisions of Self-Adaptive Systems

Abstract: Design time uncertainty poses an important challenge when developing a self-adaptive system. As an example, defining how the system should adapt when facing a new environment state, requires understanding the precise effect of an adaptation, which may not be known at design time. Online reinforcement learning, i.e., employing reinforcement learning (RL) at runtime, is an emerging approach to realizing selfadaptive systems in the presence of design time uncertainty. By using Online RL, the self-adaptive system … Show more

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