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Training Prediction Models for Rule-Based Self-Adaptive Systems

机译:基于规则的自适应系统的训练预测模型

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Architecture-based self-adaptive systems that are rule-based can be steered by predicting changes of the system utility. However, building predictions for these systems is challenging. One of the reasons is that the lack of detailed information about the system performance model makes it difficult to construct an analytic representation of the system utility. We mitigate this problem with a methodology to learn the changes of the system utility without relying on detailed information of the system. We evaluated our methodology over a real system with a range of utility complexities and different machine learning methods trained with real and publicly available failure traces. Our findings suggest that our methodology is applicable to real system failures on dynamic architectures under different configurations.
机译:可以通过预测系统实用程序的更改来引导基于架构的自适应系统。但是,对这些系统的建立预测是具有挑战性的。其中一个原因是缺乏关于系统性能模型的详细信息,使得难以构建系统实用程序的分析表示。我们通过方法来缓解此问题,以了解系统实用程序的更改而不依赖于系统的详细信息。我们在具有一系列实用复杂性和不同的机器学习方法的实际系统中评估了我们的方法论,以及具有真实和公开的故障痕迹的不同机器学习方法。我们的研究结果表明,我们的方法可能适用于不同配置的动态架构上的真实系统故障。

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