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Payload modeling for network Intrusion Detection Systems

机译:网络入侵检测系统的有效负载建模

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A number of Intrusion Detection Systems (IDS) research efforts have demonstrated that network-based attacks can be detected by modeling normal network packet payloads and watching for anomalies. In this paper, we explore a data mining technique based on Principal Component Analysis that can identify specific features within packet payloads that are highly representative of the network traffic. of their respective services. Apart from reducing the processing overhead through minimization of the feature space, the autonomous identification of such sub-groups of features can readily enable IDS's to develop classifiers that are more apt at separating normal traffic from anomalous traffic. We demonstrate the effectiveness of this techniques by generating feature sets from a collection of network traffic and applying them to the training and detection phases of a payload-based IDS. The results show that it is able to separate network attacks while maintaining low false positive rates. We also show that random sampling of less than 100% of the payload is possible and allows the IDS to combat attack obfuscation.
机译:大量入侵检测系统(IDS)的研究成果表明,可以通过对正常的网络数据包有效载荷进行建模并观察异常情况来检测基于网络的攻击。在本文中,我们探索了一种基于主成分分析的数据挖掘技术,该技术可以识别数据包有效载荷中的特定特征,这些特征可以很好地代表网络流量。他们各自的服务。除了通过最小化特征空间来减少处理开销之外,这些特征子组的自主标识还可以使IDS轻松开发出更易于将正常流量与异常流量分开的分类器。通过从网络流量的集合中生成功能集并将其应用于基于有效负载的IDS的训练和检测阶段,我们证明了这种技术的有效性。结果表明,它能够分离网络攻击,同时保持较低的误报率。我们还表明,可以对少于100%的有效负载进行随机采样,并允许IDS对抗攻击混淆。

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