Misbehavior Detection Framework for Community-Based Cloud Computing

O. A. Wahab, J. Bentahar, H. Otrok, A. Mourad
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引用次数: 6

Abstract

The success and continuation of cloud computing depends to a large extent on the quality and performance of the offered services. We propose in this paper a novel architecture for cloud computing called Community-based Cloud Computing whose main goal is to improve the quality and performance of the cloud services. In this architecture, cloud services sharing the same domain of interest are partitioned into a set of communities led by a central entity called master. The advantages of such an architecture are (1) facilitating the discovery of cloud services, (2) providing efficient means for better QoS management and resources utilization, and (3) easing intra-layer and cross-layer compositions. However, one of the serious challenges against the success of such an architecture is the presence of malicious services that launch attacks either against the whole community or against some partners in that Community. Therefore, we address this problem by proposing a misbehavior detection framework based on the Support Vector Machine (SVM) learning technique. In this framework, the master of the community monitors the behavior of its community members to populate the training set of the classifier. Thereafter, SVM is used to analyze this set and predict the final classes of the cloud services. Simulation results show that our framework is able to produce highly accurate classifiers, while maximizing the attack detection rate and minimizing the false alarms. They show also that the framework is quite resilient to the increase in the number of malicious services.
基于社区的云计算不当行为检测框架
云计算的成功和延续在很大程度上取决于所提供服务的质量和性能。本文提出了一种新的云计算架构,称为基于社区的云计算,其主要目标是提高云服务的质量和性能。在此体系结构中,共享相同感兴趣领域的云服务被划分为一组社区,这些社区由称为master的中心实体领导。这种架构的优点是:(1)便于发现云服务,(2)为更好的QoS管理和资源利用提供有效手段,(3)简化层内和层间组合。然而,阻碍这种体系结构成功的一个严重挑战是恶意服务的存在,这些服务会对整个社区或社区中的一些合作伙伴发起攻击。因此,我们提出了一个基于支持向量机(SVM)学习技术的错误行为检测框架来解决这个问题。在这个框架中,社区的主人监视其社区成员的行为,以填充分类器的训练集。然后,使用支持向量机对该集合进行分析,预测云服务的最终类别。仿真结果表明,该框架能够产生高度准确的分类器,同时最大限度地提高攻击检测率,最大限度地减少误报。它们还表明,该框架对恶意服务数量的增加具有相当的弹性。
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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