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A Network Anomaly Detection Method Based on Relative Entropy Theory

机译:基于相对熵理论的网络异常检测方法

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摘要

Network anomaly detection technology has been the research hotspot in intrusion detection (ID) field for many years. However, some issues like high false alarm rate, low detection rate and limited types of attacks which can be detected are still in existence so its wide applications in practice has been restricted. A new network anomaly detection method has been proposed in this paper. The main idea of the method is network traffic is analyzed and estimated by using Relative Entropy Theory (RET), and a network anomaly detection model based on RET is designed as well. The numerical value of relative entropy is used to alleviate the inherent contradictions between improving detection rate and reducing false alarm rate, which is more precise and can effectively reduce the error of estimation. On the 1999 DARPA/Lincoln Laboratory IDS evaluation data set, the detection results showed that the method can reach a higher detection rate at the premise of low false alarm rate.
机译:网络异常检测技术一直是入侵检测(ID)领域的研究热点。但是,仍然存在诸如误报率高,检测率低和可以检测到的攻击类型有限等问题,因此其在实践中的广泛应用受到了限制。本文提出了一种新的网络异常检测方法。该方法的主要思想是利用相对熵理论对网络流量进行分析和估计,并设计了基于RET的网络异常检测模型。相对熵的数值被用来缓解提高检测率和降低误报率之间的内在矛盾,从而更加精确,可以有效地减少估计误差。在1999 DARPA /林肯实验室IDS评估数据集上,检测结果表明,该方法可以在较低的虚警率的前提下达到较高的检测率。

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