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Quality of Service timeseries forecasting for Web Services: A machine learning, Genetic Programming-based approach

机译:Web服务的服务质量时间序列预测:一种基于遗传算法的机器学习方法

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Today, many software systems and applications are consisted of various services on the Web (Cloud). When selecting services or performing a service operation, a critical criterion is Quality of Service (QoS). Because the actual value of some dynamic QoS attributes could vary with time, there must be an approach that can accurately forecast future QoS value. In this paper, we propose to use a machine learning technique, i.e., Genetic Programming (GP), for the problem. When performing QoS forecasting, the proposed approach employs GP to evolve out a predictor, and then uses it to obtain future QoS forecasts. To test and understand the forecasting performance (accuracy) of the proposed approach, in our experiments with a real-world QoS dataset, we compare our approach with other existing QoS forecasting methods, and then prove and discuss its outperformance.
机译:如今,许多软件系统和应用程序都由Web(云)上的各种服务组成。选择服务或执行服务操作时,关键标准是服务质量(QoS)。由于某些动态QoS属性的实际值可能会随时间变化,因此必须有一种可以准确预测未来QoS值的方法。在本文中,我们建议针对该问题使用机器学习技术,即遗传编程(GP)。在执行QoS预测时,所提出的方法利用GP来发展出一个预测器,然后使用它来获得未来的QoS预测。为了测试和了解所提出方法的预测性能(准确性),在我们使用真实QoS数据集进行的实验中,我们将我们的方法与其他现有QoS预测方法进行了比较,然后证明并讨论了其出色的性能。

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