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An intrusion detection algorithm based on bag representation with ensemble support vectormachine in cloud computing

机译:基于云计算的集合支持Vectormachine的基于袋式表示的入侵检测算法

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摘要

The increase of security incidents brings a challenge to the cloud computing security. Intrusion detection technologies have been applied to protect information in cloud from being compromised, and complicated learning-based detection methods have been used to improve the performance of intrusion detection systems. Higher quality and well-formed samples are crucial to the performance of detection algorithm. Therefore, we mainly study the intrusion detection model based on data optimization processing. In this article, we establish an intrusion detection algorithm based on ensemble support vector machine with bag representation. Specifically, the sample flows are divided into bags, where the sample flows in each bag are related to each other. Each bag contains multiple related data flows that can accurately reflect intrusion behavior, especially persistent intrusion. What's more, ensemble algorithm is applied to detection model, which greatly optimizes the performance of detection algorithm. The experimental results on open access datasets show that the proposed model detects the persistent attack with 90.58% recall.
机译:安全事件的增加为云计算安全带来了挑战。已经应用入侵检测技术来保护云中的信息受到损害,并且已经使用复杂的基于学习的检测方法来改善入侵检测系统的性能。更高的质量和良好的样品对检测算法的性能至关重要。因此,我们主要研究基于数据优化处理的入侵检测模型。在本文中,我们建立了一种基于组合支持向量机的入侵检测算法,袋式表示。具体地,样品流量被分成袋子,其中每个袋子中的样品流彼此相关。每个袋子包含多个相关数据流,可以准确地反映入侵行为,尤其是持久的入侵。更重要的是,集合算法应用于检测模型,这极大地优化了检测算法的性能。开放访问数据集的实验结果表明,该模型检测到90.58%的召回持续攻击。

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