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An Entropy-based Method for Attack Detection in Large Scale Network

机译:大规模网络中基于熵的攻击检测方法

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Intrusion Detection System (IDS) typically generates a huge number of alerts with high false rate, especially in the large scale network, which result in a huge challenge on the efficiency and accuracy of the network attack detection. In this paper, an entropy-based method is proposed to analyze the numerous IDS alerts and detect real network attacks. We use Shannon entropy to examine the distribution of the source IP address, destination IP address, source threat and destination threat and datagram length of IDS alerts; employ Renyi cross entropy to fuse the Shannon entropy vector to detect network attack. In the experiment, we deploy the Snort to monitor part of Xi’an Jiaotong University (XJTU) campus network including 32 C-class network (more than 4000 users), and gather more than 40,000 alerts per hour on average. The entropy-based method is employed to analyze those alerts and detect network attacks. The experiment result shows that our method can detect 96% attacks with very low false alert rate.
机译:入侵检测系统(IDS)通常会生成大量误报率很高的警报,尤其是在大型网络中,这给网络攻击检测的效率和准确性带来了巨大挑战。本文提出了一种基于熵的方法来分析大量的IDS警报并检测实际的网络攻击。我们使用Shannon熵来检查IDS警报的源IP地址,目标IP地址,源威胁和目标威胁以及数据报长度的分布;利用人一交叉熵融合香农熵向量来检测网络攻击。在实验中,我们部署了Snort来监视西安交通大学(XJTU)校园网络的一部分,其中包括32个C级网络(4000多个用户),平均每小时收集40,000多个警报。基于熵的方法用于分析那些警报并检测网络攻击。实验结果表明,该方法能够以极低的误报率检测出96%的攻击。

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