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On the Impact of Applying Machine Learning in the Decision-Making of Self-Adaptive Systems

机译:关于应用机器学习在自适应系统决策中的影响

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Recently, we have been witnessing an increasing use of machine learning methods in self-adaptive systems. Machine learning methods offer a variety of use cases for supporting self-adaptation, e.g., to keep runtime models up to date, reduce large adaptation spaces, or update adaptation rules. Yet, since machine learning methods apply in essence statistical methods, they may have an impact on the decisions made by a self-adaptive system. Given the wide use of formal approaches to provide guarantees for the decisions made by self-adaptive systems, it is important to investigate the impact of applying machine learning methods when such approaches are used. In this paper, we study one particular instance that combines linear regression to reduce the adaptation space of a self-adaptive system with statistical model checking to analyze the resulting adaptation options. We use computational learning theory to determine a theoretical bound on the impact of the machine learning method on the predictions made by the verifier. We illustrate and evaluate the theoretical result using a scenario of the DeltaIoT artifact. To conclude, we look at opportunities for future research in this area.
机译:最近,我们一直在证明自适应系统中的机器学习方法的增加。机器学习方法提供各种用于支持自适应的使用情况,例如,保持运行时模型最新,减少大适应空间,或更新适应规则。然而,由于机器学习方法以本质统计方法适用,因此它们可能对自适应系统制成的决定产生影响。鉴于采用正式方法,为自适应系统制定的决策提供保证,重要的是要调查应用机器学习方法在使用这种方法时的影响。在本文中,我们研究了一个特定的实例,该特定实例结合了线性回归,以减少具有统计模型检查的自适应系统的适应空间,以分析产生的适应选项。我们使用计算学习理论来确定机器学习方法对验证者所做预测的影响的理论界限。我们使用DeltaIOT工件的场景说明和评估理论结果。为了得出结论,我们看看该地区未来研究的机会。

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