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张宾, 杨家海, 吴建平, 朱应武. 一个两阶段诊断网络异常的模型[J]. 计算机科学技术学报, 2012, (2): 313-327. DOI: 10.1007/s11390-012-1225-0
引用本文: 张宾, 杨家海, 吴建平, 朱应武. 一个两阶段诊断网络异常的模型[J]. 计算机科学技术学报, 2012, (2): 313-327. DOI: 10.1007/s11390-012-1225-0
Bin Zhang, Jia-Hai Yang, Jian-Ping Wu, Ying-Wu Zhu. Diagnosing Traffic Anomalies Using a Two-Phase Model[J]. Journal of Computer Science and Technology, 2012, (2): 313-327. DOI: 10.1007/s11390-012-1225-0
Citation: Bin Zhang, Jia-Hai Yang, Jian-Ping Wu, Ying-Wu Zhu. Diagnosing Traffic Anomalies Using a Two-Phase Model[J]. Journal of Computer Science and Technology, 2012, (2): 313-327. DOI: 10.1007/s11390-012-1225-0

一个两阶段诊断网络异常的模型

Diagnosing Traffic Anomalies Using a Two-Phase Model

  • 摘要: 网络流量异常是网络中流量的非正常变化,诊断这些异常对网络管理起着很重要的作用。基于流量特征的异常检测通过分析报文头部的特征字段来建模网络流量的正常或异常行为。PCA子空间方法在全网分布式多点检测异常方面已经被验证是一种有效地基于特征的检测方法。尽管PCA子空间方法对于全网流量的异常检测相对有效,但这种方法却不能有效地用于单点链路的异常检测。在这篇论文中,不同于大多数检测方法基于流级别的流量数据,本文的研究工作基于对包级别流量数据的六种流量特征的观察,提出了一种新的B6-SVM检测方法,用于单点链路包级别流量数据的异常检测。 B6-SVM的基本思想是用支持向量机对流量特征以多维的思路诊断异常。通过两阶段的分类,B6-SVM能以较高的检测率和较低的误检率来检测异常。检测结果验证了B6-SVM在诊断异常情况时的有效性和强大的潜力。并且,和以往基于流量特征的检测方法相比,B6-SVM提供了一个能自动识别可能的异常类型的框架。这个框架具有一定的通用性,因此,我们希望我们的研究能给未来类似的研究工作提供帮助和启示。

     

    Abstract: Network traffic anomalies are unusual changes in a network, so diagnosing anomalies is important for network management. Feature-based anomaly detection models (ab)normal network traffic behavior by analyzing packet header features. PCA-subspace method (Principal Component Analysis) has been verified as an efficient feature-based way in network-wide anomaly detection. Despite the powerful ability of PCA-subspace method for network-wide traffic detection, it cannot be effectively used for detection on a single link. In this paper, different from most works focusing on detection on flow-level traffic, based on observations of six traffic features for packet-level traffic, we propose a new approach B6-SVM to detect anomalies for packet-level traffic on a single link. The basic idea of B6-SVM is to diagnose anomalies in a multi-dimensional view of traffic features using Support Vector Machine (SVM). Through two-phase classification, B6-SVM can detect anomalies with high detection rate and low false alarm rate. The test results demonstrate the effectiveness and potential of our technique in diagnosing anomalies. Further, compared to previous feature-based anomaly detection approaches, B6-SVM provides a framework to automatically identify possible anomalous types. The framework of B6-SVM is generic and therefore, we expect the derived insights will be helpful for similar future research efforts.

     

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