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A New Intrusion Detection Feature Extraction Method Based on Complex Network Theory

机译:一种基于复杂网络理论的新型入侵检测特征提取方法

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Whether the most important features can be extracted to reduce the dimension of the features or not is crucial to improving the efficiency and performance of the Intrusion Detection System (IDS). In this paper, an intrusion detection feature extraction method based on the complex network theory and the MST algorithm is proposed. The method takes the features of the network connections as nodes of a scale-free model, then detects the clusters of the network and extracts the key nodes of the model. The extracted nodes can be used in the IDS to detect the existence of intrusions. The result shows that the detection rate of the method is almost 1 percent lower than that of the Principal Component Analysis (PCA) algorithm, but the efficiency is improved by 13 percent. At last, how to apply the method to the intrusion detection pattern match is discussed.
机译:是否可以提取最重要的特征以减少特征的尺寸,而不是对提高入侵检测系统(IDS)的效率和性能至关重要。 本文提出了一种基于复杂网络理论和MST算法的入侵检测特征提取方法。 该方法将网络连接的特征作为无垢模型的节点,然后检测网络的群集并提取模型的密钥节点。 提取的节点可以用于IDS以检测入侵的存在。 结果表明,该方法的检测率几乎低于主成分分析(PCA)算法的1%,但效率提高了13%。 最后,讨论了如何将方法应用于入侵检测模式匹配。

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