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A collaborative analysis method of user abnormal behavior based on reputation voting in cloud environment

机译:云环境中基于信誉投票的用户异常行为协同分析方法

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摘要

It is the foundation of accessing and controlling cloud environment to establish the mutual trust relationship between users and clouds. How to identify the credible degree of the user identity and its behaviors have become the core problems. Combining with the abnormal recognition and misuse recognition, this paper proposes a collaborative analysis method of user abnormal behavior based on reputation voting. Firstly, the under-sampling and pruning technique are used to construct training samples to avoid high overhead for identifying all data, meanwhile it has solved the problem of unbalanced data learning. Moreover, reputation computing model combining with semi-supervised learning constructs ensemble classifier, and 2-level Chord is used to store reputation to realize its bidirectional query. On this basis, the base classifier is used to vote user behaviors by reputation in order to improve the speed of identifying abnormal behavior. The experimental results show that the scheme could improve the detection speed and clustering accuracy obviously in big data of the mobile user environment, and it has better effect for larger dataset with unbalanced rate especially.
机译:建立用户与云之间的相互信任关系是访问和控制云环境的基础。如何识别用户身份及其行为的可信度已成为核心问题。结合异常识别和滥用识别,提出了一种基于声誉投票的用户异常行为协同分析方法。首先,采用欠采样和修剪技术构造训练样本,避免了用于识别所有数据的高昂开销,同时解决了数据学习不平衡的问题。此外,信誉计算模型结合半监督学习构造集成分类器,并使用2级Chord存储信誉以实现其双向查询。在此基础上,使用基本分类器通过信誉对用户行为进行投票,以提高识别异常行为的速度。实验结果表明,该方案在移动用户环境的大数据环境下,能明显提高检测速度和聚类精度,尤其对于不平衡率较大的数据集,效果更好。

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