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基于聚类集成的网络入侵检测算法
引用本文:赵晖.基于聚类集成的网络入侵检测算法[J].科学技术与工程,2012,12(23):5797-5800.
作者姓名:赵晖
作者单位:陕西理工学院
基金项目:陕西省教育厅科研基金(112M034、12JK0864)和陕西理工学院科研基金(SLGKY11-08)
摘    要:为了进一步提高网络入侵检测的效果,提出一种基于聚类集成的入侵检测算法。首先利用Bagging算法从训练集中生成多个训练子集。然后调用模糊C均值聚类算法训练并生产多个基本聚类器。然后利用信息论构造适应度函数。采用粒子群算法从上述聚类集体中获得一个具有最优性能的集成聚类器。仿真实验结果表明,该算法能有效的提高入侵检测的精度,具有较高的泛化性和和稳定性。

关 键 词:入侵检测  聚类集成  Bagging  模糊C均值  粒子群算法
收稿时间:5/9/2012 11:41:17 AM
修稿时间:5/9/2012 11:41:17 AM

Network Intrusion Detection Algorithm based on Clustering Ensemble
zhaohui.Network Intrusion Detection Algorithm based on Clustering Ensemble[J].Science Technology and Engineering,2012,12(23):5797-5800.
Authors:zhaohui
Affiliation:ZHAO Hui(School of Mathematics and Computer Science,Shaanxi University of Technology,Hanzhong 723000,P.R.China)
Abstract:To improve the ability of network intrusion detection, this paper present a detection algorithm based on clustering ensemble. First,many training subsets were produced from training dataset by Bagging ,and clustering individuals were trained by fuzzy c-means clustering.Then,fitness function was construct using information theory,ensemble clustering machine of better ability were obtained from clustering individuals based on particle swarm optimization algorithm.The experiments show that the algorithm effectively improve accuracy of intrusion detection, it have higher generalization performance and stability.
Keywords:network intrusion detection  clustering ensemble  Bagging  fuzzy c-means clusting(FCM)    particle swarm optimization algorithm(PSO)  network intrusion detection  clustering ensemble  Bagging  fuzzy c-means clusting(FCM)    particle swarm optimization algorithm(PSO)
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