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Intrusion detection based on rough set and artificial immune

Intrusion detection based on rough set and artificial immune
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摘要 In order to increase intrusion detection rate and decrease false positive detection rate,a novel intrusion detection algorithm based on rough set and artificial immune( RSAI-IDA) is proposed.Using artificial immune in intrusion detection,anomaly actions are detected adaptively,and with rough set,effective antibodies can be obtained. A scheme,in which antibodies are partly generated randomly and others are from the artificial immune algorithm,is applied to ensure the antibodies diversity. Finally,simulations of RSAI-IDA and comparisons with other algorithms are given. The experimental results illustrate that the novel algorithm achieves more effective performances on anomaly intrusion detection,where the algorithm's time complexity decreases,the true positive detection rate increases,and the false positive detection rate is decreased. In order to increase intrusion detection rate and decrease false positive detection rate,a novel intrusion detection algorithm based on rough set and artificial immune( RSAI-IDA) is proposed.Using artificial immune in intrusion detection,anomaly actions are detected adaptively,and with rough set,effective antibodies can be obtained. A scheme,in which antibodies are partly generated randomly and others are from the artificial immune algorithm,is applied to ensure the antibodies diversity. Finally,simulations of RSAI-IDA and comparisons with other algorithms are given. The experimental results illustrate that the novel algorithm achieves more effective performances on anomaly intrusion detection,where the algorithm's time complexity decreases,the true positive detection rate increases,and the false positive detection rate is decreased.
出处 《High Technology Letters》 EI CAS 2016年第4期368-375,共8页 高技术通讯(英文版)
基金 Supported by the National Natural Science Foundation of China(No.61502436) the Science and Technology Project of Henan Province(No.152102210146) the Doctoral Fund for the Central Universities(No.2014BSJJ084)
关键词 rough set artificial immune anomaly intrusion detection rough set and artificial immune(RSAI-IDA) rough set artificial immune anomaly intrusion detection rough set and artificial immune(RSAI-IDA)
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