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Hierarchical Method for Anomaly Detection and Attack Identification in High-speed Network

机译:高速网络中异常检测和攻击识别的分层方法

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Traffic anomaly detection and attack identification are research focus in the network security community. In the paper, a hierarchical system framework is proposed to detect and identify traffic anomaly in high-speed network. At first, multiple basic detectors developed under authors? previous research work are represented roughly. Then an alerts fusion method combining these basic detectors is used to improve on the anomaly detection ability. Experiments in real high-speed network demonstrate that the method has higher detection performance than basic detectors and majority voting method. To further identify attack type accurately, seven traffic features are used to characterize three types of attack (port scan, network scan and DoS attack) and traffic distribution change for each traffic feature is measured by cross entropy. Then Exponentially Weighted Moving Average (EWMA) control chart method based on cross entropy is proposed to classify attacks. The experimental results on traffic in backbone router have shown that the method has strong ability to detect and identify attacks.
机译:流量异常检测和攻击识别是网络安全领域的研究重点。本文提出了一种分层的系统框架来检测和识别高速网络中的流量异常。首先,在作者的协助下开发了多个基本探测器?以前的研究工作大致代表。然后,结合这些基本检测器的警报融合方法被用来提高异常检测能力。实际高速网络中的实验表明,该方法具有比基本检测器和多数表决方法更高的检测性能。为了进一步准确地识别攻击类型,使用了七个流量特征来表征三种攻击类型(端口扫描,网络扫描和DoS攻击),并通过交叉熵来衡量每种流量特征的流量分布变化。然后提出了基于交叉熵的指数加权移动平均控制图方法,对攻击进行分类。对骨干路由器流量的实验结果表明,该方法具有较强的检测和识别攻击的能力。

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