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Hybrid Model Based on Artificial Immune System and PCA Neural Networks for Intrusion Detection

机译:基于人工免疫系统的混合模型和用于入侵检测的PCA神经网络

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Intrusion detection systems (IDS) are developing very rapid in recent years. But most traditional IDS can only detect either misuse or anomaly attacks. In this paper, we propose a method combining artificial immune technique and principal components analysis (PCA) neural networks to construct an intrusion detection model capable of both anomaly detection and misuse detection. Initially an artificial immune system detects anomalous network connections. In order to attain more detailed information about an intrusion, PCA is applied for classification and neural networks are used for online computing. The experiments and evaluations of the proposed method were performed with the KDD Cup 99 intrusion detection dataset, which have information on computer network, during normal behavior and intrusive behavior. Results indicate the high detection accuracy for intrusion attacks and low false alarm rate of the reliable system.
机译:近年来入侵检测系统(IDS)正在发展非常迅速。但大多数传统ID只能检测到滥用或异常攻击。在本文中,我们提出了一种组合人工免疫技术和主成分分析(PCA)神经网络的方法来构建能够进行异常检测和误用检测的入侵检测模型。最初,人工免疫系统检测了异常网络连接。为了获得有关侵入的更详细信息,PCA应用于分类,神经网络用于在线计算。在正常行为和侵入行为期间,使用KDD杯99入侵检测数据集进行了所提出的方法的实验和评价。结果表示可靠系统的入侵攻击和低误报率的高检测精度。

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