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Large-scale IP network behavior anomaly detection and identification using substructure-based approach and multivariate time series mining

机译:基于子结构的方法和多元时间序列挖掘的大规模IP网络行为异常检测与识别

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摘要

In this paper, a substructure-based network behavior anomaly detection approach, called WFS (Weighted Frequent Subgraphs), is proposed to detect the anomalies of a large-scale IP networks. With application of WFS, an entire graph is examined, unusual substructures of which are reported. Due to additional information given by the graph, the anomalies are able to be detected more accurately. With multivariate time series motif association rules mining (MTSMARM), the patterns of abnormal traffic behavior are able to be obtained. In order to verify the above proposals, experiments are conducted and, together with application of backbone networks (Internet2) Netflow data, show some positive results.
机译:在本文中,提出了一种基于子结构的网络行为异常检测方法,称为WFS(加权频繁子图),用于检测大规模IP网络的异常。随着WFS的应用,将检查整个图形,并报告其异常的子结构。由于图表提供了其他信息,因此可以更准确地检测到异常。通过使用多元时间序列主题关联规则挖掘(MTSMARM),可以获取异常交通行为的模式。为了验证上述建议,进行了实验,并与骨干网(Internet2)Netflow数据的应用一起显示了一些积极的结果。

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