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Intrusion detection method research based on optimized self-buildup clustering neural network

机译:基于优化自增聚类神经网络的入侵检测方法研究

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This paper puts forward a method of bringing neural network to bear intrusion detection. When the average error can't decrease any longer, the hereditary algorithm will be used to continuatively train the network in the interest of acquiring optimized join parameter. The network structure and network joining parameter will evolve at the same time by the neural network and hereditary algorithm. The convergence effect is good and the adaptivity is strong, suitable for real-time processing.
机译:提出了一种将神经网络用于入侵检测的方法。当平均误差不再减小时,为了获得优化的连接参数,将使用遗传算法连续训练网络。神经网络和遗传算法将同时演化网络结构和网络连接参数。收敛效果好,适应性强,适合实时处理。

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