Reasoning about sensing uncertainty and its reduction in decision-making for self-adaptation
Title | Reasoning about sensing uncertainty and its reduction in decision-making for self-adaptation |
Publication Type | Journal Article |
Year of Publication | 2018 |
Authors | Cámara, Javier, Peng, Wenxin, Garlan, David, Schmerl, Bradley |
Journal | Science of Computer Programming |
Volume | 167 |
Start Page | 51 |
Date Published | 12/2018 |
Keywords | 2018: July, Adaptive system; Uncertainty; Uncertainty awareness; Uncertainty reduction; Decision making, CMU, Human Behavior, Metrics, Model-Based Explanation For Human-in-the-Loop Security, Resilient Architectures |
Abstract | Adaptive systems are expected to adapt to unanticipated run-time events using imperfect information about themselves, their environment, and goals. This entails handling the effects of uncertainties in decision-making, which are not always considered as a first-class concern. This paper contributes a formal analysis technique that explicitly considers uncertainty in sensing when reasoning about the best way to adapt, together with uncertainty reduction mechanisms to improve system utility. We illustrate our approach on a Denial of Service (DoS) attack scenario and present results that demonstrate the benefits of uncertainty-aware decision-making in comparison to using an uncertainty-ignorant approach, both in the presence and absence of uncertainty reduction mechanisms. |
DOI | doi.org/10.1016/j.scico.2018.07.002 |
Citation Key | node-56352 |
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