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Long-Term QoS-Aware Cloud Service Composition Using Multivariate Time Series Analysis

机译:使用多元时间序列分析的长期QoS感知云服务组合

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摘要

We propose a cloud service composition framework that selects the optimal composition based on an end user's long-term Quality of Service (QoS) requirements. In a typical cloud environment, existing solutions are not suitable when service providers fail to provide the long-term QoS provision advertisements. The proposed framework uses a new multivariate QoS analysis to predict the long-term QoS provisions from service providers’ historical QoS data and short-term advertisements represented using Time Series. The quality of the QoS prediction is improved by incorporating QoS attributes’ intra correlations into the multivariate analysis. To select the optimal service composition, the proposed framework uses QoS time series’ inter correlations and performs a novel time series group similarity approach on the predicted QoS values. Experiments are conducted on real QoS dataset and results prove the efficiency of the proposed approach.
机译:我们提出了一种云服务组合框架,该框架根据最终用户的长期服务质量(QoS)要求选择最佳组合。在典型的云环境中,当服务提供商无法提供长期QoS设置广告时,现有解决方案不适用。拟议的框架使用新的多元QoS分析来根据服务提供商的历史QoS数据和使用时间序列表示的短期广告来预测长期QoS规定。通过将QoS属性的内部相关性纳入多元分析,可以改善QoS预测的质量。为了选择最佳服务组合,建议的框架使用QoS时间序列的相互关系,并对预测的QoS值执行新颖的时间序列组相似性方法。在真实的QoS数据集上进行了实验,结果证明了该方法的有效性。

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