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Network Traffic Analysis Using Refined Bayesian Reasoning to Detect Flooding and Port Scan Attacks

机译:使用精制贝叶斯推理来检测洪水和端口扫描攻击的网络流量分析

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Dynamical analysis of the current network status is critical to detect large scale intrusions and to ensure the networks to continually function. Collecting and analyzing traffic in real time and reporting the current status in time provide a feasible way. In this paper we used a refined Naïve Bayes method, Naïve Bayes Kernel Estimator (NBKE), to identify flooding attacks and port scans from normal traffic. The mechanism of our method is based on the observation that almost all known attacks could significantly change the traffic features. Uniquely, we employ the hand-identified traffic instance as the input of the NBKE. In this paper, we illustrate the higher accuracy in detection the flooding attacks and port scan behavior by using NBKE. Our results indicate that the simplest Naïve Bayes (NB) estimator is able to achieve about 88.4% accuracy, while the Kernel Estimator can provide 96.8% accuracy. We also demonstrate that the mechanism our method based on is more reasonable.
机译:当前网络状态的动态分析对于检测大规模入侵并确保网络不断运行至关重要。实时收集和分析流量,并及时报告当前状态提供可行的方式。在本文中,我们使用了精制的Naïve贝雷斯方法,Naïve贝雷斯核估算器(NBKE),以识别来自正常流量的洪水攻击和端口扫描。我们的方法机制基于观察结果,即几乎所有已知的攻击都可以显着改变流量特征。唯一的是,我们使用手工识别的流量实例作为NBKE的输入。在本文中,我们说明了使用NBKE检测洪水攻击和端口扫描行为的更高准确性。我们的结果表明,最简单的Naïve贝叶斯(NB)估计能够达到约88.4%的精度,而核估计器可以提供96.8%的精度。我们还证明了我们基于方法的方法更合理。

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