Multivariate QoS Monitoring in Mobile Edge Computing based on Bayesian Classifier and Rough Set

Pengcheng Zhang, Yaling Zhang, Hai Dong, Huiying Jin
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引用次数: 2

Abstract

Mobile edge computing transfers computing and storage from traditional cloud servers to edge servers, presenting new challenges to quality assurance of edge services. Quality of Service (QoS) is considered as a defacto standard to evaluate similar services with different quality. Given the fact that QoS values are highly dynamic in complex edge environments, QoS monitoring is viewed as a promising technique to comprehensively and effectively understand QoS status of edge services. Due to the distributed storage of historical QoS data and the changeable edge environments, traditional QoS monitoring approaches cannot be directly applied into mobile edge computing. To address this problem, this paper proposes a novel multivariate QoS monitoring approach, called Rs-mBSRM (multivariate BayeSian Runtime Monitoring using Rough set), First, the weights of different QoS attributes are quantified and obtained according to the historical samples based on rough set theory. Second, a Bayesian classifier is constructed for each corresponding edge server during the training stage. Finally, during the monitoring stage, considering the distributed data storage, the classifier is dynamically switched and the attribute weights are also updated due to user mobility. Our experimental results on public data sets show that Rs-mBSRM is better than existing QoS monitoring approaches and is more suitable for mobile edge computing.
基于贝叶斯分类器和粗糙集的移动边缘计算多变量QoS监控
移动边缘计算将计算和存储从传统的云服务器转移到边缘服务器,对边缘服务的质量保证提出了新的挑战。服务质量(QoS)被认为是评价具有不同质量的类似服务的事实上的标准。在复杂的边缘环境中,QoS值是高度动态的,QoS监控被认为是全面有效地了解边缘服务QoS状态的一种很有前途的技术。由于历史QoS数据的分布式存储和边缘环境的多变,传统的QoS监控方法不能直接应用到移动边缘计算中。针对这一问题,本文提出了一种新的多变量QoS监控方法Rs-mBSRM (multivariate BayeSian Runtime monitoring using Rough set)。首先,基于粗糙集理论,根据历史样本对不同QoS属性的权值进行量化并得到;其次,在训练阶段为每个相应的边缘服务器构建贝叶斯分类器;最后,在监控阶段,考虑到数据的分布式存储,根据用户的移动性动态切换分类器,更新属性权值。我们在公共数据集上的实验结果表明,Rs-mBSRM比现有的QoS监控方法更好,更适合于移动边缘计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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