Author:
Zhou Guo,Miao Fahui,Tang Zhonghua,Zhou Yongquan,Luo Qifang
Abstract
IntroductionThe development of the Internet has made life much more convenient, but forms of network intrusion have become increasingly diversified and the threats to network security are becoming much more serious. Therefore, research into intrusion detection has become very important for network security.MethodsIn this paper, a clustering algorithm based on the symbiotic-organism search (SOS) algorithm and a Kohonen neural network is proposed.ResultsThe clustering accuracy of the Kohonen neural network is improved by using the SOS algorithm to optimize the weights in the Kohonen neural network.DiscussionOur approach was verified with the KDDCUP99 network intrusion data. The experimental results show that SOS-Kohonen can effectively detect intrusion. The detection rate was higher, and the false alarm rate was lower.
Funder
National Natural Science Foundation of China
Subject
Cellular and Molecular Neuroscience,Neuroscience (miscellaneous)
Cited by
5 articles.
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