
Registered user since Mon 23 Oct 2017
Contributions
2022
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Registered user since Mon 23 Oct 2017
Contributions
NIER Track
Thu 13 Oct 2022 14:50 - 15:00 at Room 128 - Technical Session 28 - Safety-Critical and Self-Adaptive Systems Chair(s): Eunsuk KangSelf-adaptive systems increasingly rely on machine learning techniques as black-box models to make decisions even when the target world of interest includes uncertainty and unknowns. Because of the lack of transparency, adaptation decisions, as well as their effect on the world, are hard to explain. This often hinders the ability to trace unsuccessful adaptations back to understandable root causes. In this paper, we introduce our vision of explainable self-adaptation. We demonstrate our vision by instantiating our ideas on a running example in the robotics domain and by showing an automated proof-of-concept process providing human-understandable explanations for successful and unsuccessful adaptations in critical scenarios.
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