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Intrusion detection using rough set classification
作者姓名:张连华  张冠华  郁郎  张洁  白英彩
作者单位:Department of Computer Science and Engineering,Shanghai Jiaotong University,Shanghai 200030,China An Zong Information Technology Inc.,Shanghai 200042,China,Department of Computer Science and Engineering,Shanghai Jiaotong University,Shanghai 200030,China,www. antpower. org,Department of Computing,Hong Kong Polytechnic University,Hong Kong,China,Department of Computer Science and Engineering,Shanghai Jiaotong University,Shanghai 200030,China
基金项目:Project (No. 2001 AA40437.2) partially supported by the Hi-Tech Research,Development Program (863) of China
摘    要:Recently machine learning-based intrusion detection approaches have been subjected to extensive researches because they can detect both misuse and anomaly. In this paper, rough set classification (RSC), a modern learning algorithm, is used to rank the features extracted for detecting intrusions and generate intrusion detection models. Feature ranking is a very critical step when building the model. RSC performs feature ranking before generating rules, and converts the feature ranking to minimal hitting set problem addressed by using genetic algorithm (GA). This is done in classical approaches using Support Vector Machine (SVM) by executing many iterations, each of which removes one useless feature. Compared with those methods, our method can avoid many iterations. In addition, a hybrid genetic algorithm is proposed to increase the convergence speed and decrease the training time of RSC. The models generated by RSC take the form of "IF-THEN" rules, which have the advantage of explication. Tests and compa


Intrusion detection using rough set classification
ZHANG Lian-hua ZHANG Guan-hua,YU Lang ZHANG Jie,BAI Ying-cai.Intrusion detection using rough set classification[J].Journal of Zhejiang University Science,2004(9).
Authors:ZHANG Lian-hua ZHANG Guan-hua  YU Lang ZHANG Jie  BAI Ying-cai
Abstract:Recently machine learning-based intrusion detection approaches have been subjected to extensive researches because they can detect both misuse and anomaly. In this paper, rough set classification (RSC), a modern learning algorithm, is used to rank the features extracted for detecting intrusions and generate intrusion detection models. Feature ranking is a very critical step when building the model. RSC performs feature ranking before generating rules, and converts the feature ranking to minimal hitting set problem addressed by using genetic algorithm (GA). This is done in classical approaches using Support Vector Machine (SVM) by executing many iterations, each of which removes one useless feature. Compared with those methods, our method can avoid many iterations. In addition, a hybrid genetic algorithm is proposed to increase the convergence speed and decrease the training time of RSC. The models generated by RSC take the form of "IF-THEN" rules, which have the advantage of explication. Tests and comparison of RSC with SVM on DARPA benchmark data showed that for Probe and DoS attacks both RSC and SVM yielded highly accurate results (greater than 99% accuracy on testing set).
Keywords:Intrusion detection  Rough set classification  Support vector machine  Genetic algorithm
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