Intelligent Bayesian Classifiers in Network Intrusion Detection
暂无分享,去创建一个
The aim of this paper is to explore the effectiveness of Bayesian classifiers in intrusion detection (ID). Specifically, we provide an experimental study that focuses on comparing the accuracy of different classification models showing that the Bayesian classification approach is reasonably effective and efficient in predicting attacks and in exploiting the knowledge required by a computational intelligent ID process.
[1] Wenke Lee. Applying data mining to intrusion detection: the quest for automation, efficiency, and credibility , 2002, SKDD.
[2] Salvatore J. Stolfo,et al. A framework for constructing features and models for intrusion detection systems , 2000, TSEC.
[3] Joseph S. Yarmus,et al. ABN: A Fast, Greedy Bayesian Network Classifier , 2002 .