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Mcpad: A Multiple Classifier System For Accurate Payload-based Anomaly Detection

机译:Mcpad:多种分类器系统,用于基于有效载荷的准确异常检测

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Anomaly-based network intrusion detection systems (IDS) are valuable tools for the defense-in-depth of computer networks. Unsupervised or unlabeled learning approaches for network anomaly detection have been recently proposed. Such anomaly-based network IDS are able to detect (unknown) zero-day attacks, although much care has to be dedicated to controlling the amount of false positives generated by the detection system. As a matter of fact, it is has been shown that the false positive rate is the true limiting factor for the performance of IDS, and that in order to substantially increase the Bayesian detection rate, P(lntrusion|Alarm), the IDS must have a very low false positive rate (e.g., as low as 10~(-5) or even lower). In this paper we present McPAD (multiple classifier payload-based anomaly detector), a new accurate payload-based anomaly detection system that consists of an ensemble of one-class classifiers. We show that bur anomaly detector is very accurate in detecting network attacks that bear some form of shell-code in the malicious payload. This holds true even in the case of polymorphic attacks and for very low false positive rates. Furthermore, we experiment with advanced polymorphic blending attacks and we show that in some cases even in the presence of such sophisticated attacks and for a low false positive rate our IDS still has a relatively high detection rate.
机译:基于异常的网络入侵检测系统(IDS)是用于深度防御计算机网络的宝贵工具。最近已经提出了用于网络异常检测的无监督或无标签学习方法。这样的基于异常的网络IDS能够检测(未知)零时差攻击,尽管必须特别注意控制检测系统生成的误报数量。实际上,事实证明,误报率是IDS性能的真正限制因素,并且为了显着提高贝叶斯检测率P(Intrusion | Alarm),IDS必须具有极低的误报率(例如低至10〜(-5)甚至更低)。在本文中,我们介绍了McPAD(基于多个分类器基于有效载荷的异常检测器),这是一个由一类分类器组成的新型基于精确有效载荷的异常检测系统。我们表明,bur异常检测器在检测网络攻击中非常准确,该网络攻击在恶意有效负载中带有某种形式的外壳代码。即使在多态攻击和非常低的假阳性率的情况下,也是如此。此外,我们对先进的多态混合攻击进行了实验,结果表明,即使在存在此类复杂攻击且误报率较低的情况下,我们的IDS仍具有相对较高的检测率。

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