"An Improved Artificial Immune System-Based Network Intrusion Detection by Using Rough Set"
written by Junyuan Shen, Jidong Wang, Hao Ai,
published by Communications and Network, Vol.4 No.1, 2012
has been cited by the following article(s):
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