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A Class of Non-statistical Traffic Anomaly Detection in Complex Network Systems

机译:复杂网络系统中的一类非统计流量异常检测

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Recently Network traffic anomaly detection has become a popular research tendency, as it can detect new attack types in real time. The real-time network traffic anomaly detection is still an unsolved problem of network security. The network traffic appears as a complex dynamic system, precipitated by many network factors. Although various schemes have been proposed to detect anomalies, they are mostly based on traditional statistical physics. In these methods, all factors are integrated to analyze the variation of the network traffic. But in fact, the changing trend of network traffic at some moment is only determined by a few primary factors. In this paper, we present a non-statistical network traffic anomaly detection method based on the synergetic neural networks. For our method, a synergetic dynamic equation based on the order parameters is used to describe the complex behavior of the network traffic system. When the synergetic dynamic equation is evolved, only the order parameter determined by the primary factors can converge to 1. Therefore, the network traffic anomaly can be detected by referring to the primary factors. We evaluate our approach using the intrusion evaluation data set of the network traffic provided by the defense advanced research projects agency (DARPA). Experiment results show that our approach can effectively detect the network anomaly and achieve high detection probability and low false alarms rate.
机译:最近,网络流量异常检测已成为一种流行的研究趋势,因为它可以实时检测新的攻击类型。实时网络流量异常检测仍然是网络安全性尚未解决的问题。网络流量显示为一个复杂的动态系统,由许多网络因素促成。尽管已提出了各种检测异常的方案,但它们大多基于传统的统计物理学。在这些方法中,综合了所有因素以分析网络流量的变化。但是实际上,网络流量在某些时候的变化趋势仅由几个主要因素决定。本文提出了一种基于协同神经网络的非统计网络流量异常检测方法。对于我们的方法,基于顺序参数的协同动态方程用于描述网络流量系统的复杂行为。当协同动力学方程式发展时,只有由主要因素决定的阶次参数可以收敛到1。因此,可以通过参考主要因素来检测网络流量异常。我们使用国防高级研究计划局(DARPA)提供的网络流量入侵评估数据集来评估我们的方法。实验结果表明,该方法可以有效地检测网络异常,实现较高的检测概率和较低的误报率。

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