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An Anomaly Detection and Analysis Method for Network Traffic Based on Correlation Coefficient Matrix

机译:基于相关系数矩阵的网络流量异常检测与分析方法

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Based on TCP protocol, this paper aims at TCP flows, discusses the effects of multivariate correlation analysis on network traffic, obtains the quantitative relationship between different types of TCP packets in each time unit by correlation coefficient matrix, and finally proposes an anomaly detection and analysis method based on the correlation coefficient matrix. The experimental results show that our method can efficiently distinguish normal and abnormal traffic, and accurately detect and classify various anomaly behaviors (such as network scanning and DDoS attacks) in network traffic. The linear complexity of our method makes real-time detection and analysis practical.
机译:基于TCP协议,本文的目标是TCP流动,讨论多变量相关分析对网络流量的影响,通过相关系数矩阵获得每次单位不同类型的TCP分组之间的定量关系,最后提出了异常检测和分析基于相关系数矩阵的方法。实验结果表明,我们的方法可以有效地区分正常和异常的流量,并准确地检测和分类网络流量中的各种异常行为(如网络扫描和DDOS攻击)。我们方法的线性复杂性使实时检测和分析实用。

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