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引用次数: 5

摘要

流量矩阵(Traffic Matrix, TM)可以包含不规则网络拓扑结构的信息,描述全局网络的流量特征。它是网络流量工程的一个重要参数,引起了广泛的研究兴趣。扩散小波(Diffusion Wavelet, DW)能够在时域和空域对TM进行有效的多分辨率分析(Multi-Resolution Analysis, MRA)。本文介绍了如何将DW应用于TM分析和异常检测。通过与其他异常检测方法的比较,证实了该方法与DW分析结果相结合,能够有效检测异常。
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Diffusion Wavelet-Based Anomaly Detection in Networks
Traffic Matrix (TM) can contain information about irregular network topology structure and depict the traffic characteristics of global network. It is a critical parameter to network traffic engineering and attracts significant research interests. Diffusion Wavelet (DW) can perform an effective Multi-Resolution Analysis (MRA)on TM in both temporaland space domains because it intrinsically adapts to the underlying network structure. This paper shows how to apply DW to TM analysis and anomaly detection. By comparing with other anomaly detection methods, it is confirmed thatour method can detect anomaly effectively due to combining with the analysis results by DW.
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