Anomaly Intrusion Detection Approach Using Hybrid MLP/CNN Neural Network

Yu Yao, Yang Wei, Fu-xiang Gao, Yao Yu
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引用次数: 43

Abstract

An anomaly intrusion detection approach based on hybrid MLP/CNN (multi-layer perceptron/chaotic neural network) neural network is proposed in this paper. Most anomaly detection approaches using MLP can detect novel real-time attacks, but still has high false alarm rates. Most attacks are composed of a series of anomaly events. These attacks are called time-delayed attacks, which current neural network IDSs (intrusion detection system) cannot identify efficiently. A hybrid MLP/CNN neural network is constructed in order to improve the detection rate of time-delayed attacks. While obtaining a similarly detection rate of real-time attacks as the MLP does, the proposed approach can detect time-delayed attacks efficiently with chaotic neuron. This approach also exhibits a lower false alarm rate when detects novel attacks. The simulation tests are conducted using DARPA 1998 dataset. The experimental results are presented and compared in ROC curves, which can demonstrate that the proposed approach performs exceptionally in terms of both detection rate and false alarm rate
基于MLP/CNN神经网络的异常入侵检测方法
提出了一种基于MLP/CNN(多层感知器/混沌神经网络)混合神经网络的异常入侵检测方法。大多数使用MLP的异常检测方法可以检测到新的实时攻击,但仍然存在较高的误报率。大多数攻击由一系列异常事件组成。这些攻击被称为时延攻击,目前的神经网络入侵检测系统无法有效识别。为了提高延时攻击的检测率,构建了MLP/CNN混合神经网络。在获得与MLP相似的实时攻击检测率的同时,该方法可以有效地检测混沌神经元的延时攻击。当检测到新的攻击时,这种方法也显示出较低的误报率。模拟试验采用DARPA 1998数据集进行。给出了实验结果,并在ROC曲线上进行了比较,结果表明该方法在检测率和虚警率方面都表现优异
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