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Network Intrusion Detection Using an Improved Competitive Learning Neural Network
Fredericton, N.B., Canada May 19-May 21
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/DNSR.2004.1344728Second Annual Conference on Communica ...
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John Zhong Lei, University of New Brunswick
Ali Ghorbani, University of New Brunswick
This paper presents a novel approach for detecting network intrusions based on a competitive learning neural network. In the paper, the performance of this approach is compared to that of the self-organizing map (SOM), which is a popular unsupervised training algorithm used in intrusion detection. While obtaining a similarly accurate detection rate as the SOM does, the proposed approach uses only one forth of the computation time of the SOM. Furthermore, the clustering result of this method is independent of the number of the initial neurons. This approach also exhibits the ability to detect the known and unknown network attacks. The experimental results obtained by applying this approach to the KDD-99 data set demonstrate that the proposed approach performs exceptionally in terms of both accuracy and computation time.
Index Terms:
Network Security, Network Intrusion Detection, Data Mining, Arti.cial Neural Network, Competitive Learning
Citation:
John Zhong Lei, Ali Ghorbani, "Network Intrusion Detection Using an Improved Competitive Learning Neural Network," cnsr, pp.190-197, Second Annual Conference on Communication Networks and Services Research (CNSR'04), 2004
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