首页 | 本学科首页   官方微博 | 高级检索  
     

基于Bagging支持向量机集成的入侵检测研究
引用本文:谷雨,郑锦辉,戴明伟,何磊.基于Bagging支持向量机集成的入侵检测研究[J].微电子学与计算机,2005,22(5):17-19.
作者姓名:谷雨  郑锦辉  戴明伟  何磊
作者单位:1. 西安交通大学电子与信息工程学院,陕西,西安,710049
2. 西安交通大学理学院,陕西,西安,710049
3. 云南民族大学数学与计算机科学学院,云南,昆明,650031
摘    要:对大数据集来说,支持向量机的时空耗费非常大,本文采用bagging技术对支持向量机进行集成。首先用bootstrap技术对训练样本集进行可重复采样,使所得到的新子样本集有较大差异,然后用多个支持向量机对各子样本集进行学习,并将学习后的结果用多数投票法集成最终的结论。实验表明,支持向量机集成对入侵检测数据有比单个支持向量机更好的分类性能。

关 键 词:入侵检测  支持向量机  集成  Bagging
文章编号:1000-7180(2005)05-017
修稿时间:2005年1月6日

Intrusion Detection Based on Support Vector Machine Ensemble with Bagging
GU Yu,ZHENG Jin-hui,DAI Ming-wei,HE Lei.Intrusion Detection Based on Support Vector Machine Ensemble with Bagging[J].Microelectronics & Computer,2005,22(5):17-19.
Authors:GU Yu  ZHENG Jin-hui  DAI Ming-wei  HE Lei
Affiliation:GU Yu1,ZHENG Jin-hui2,DAI Ming-wei1,HE Lei3
Abstract:For large data sets, the performance of Support Vector Machine (SVM) is not satisfied, because of its high complexity of time and space. In order to reduce the complexities, we propose a new method that uses the SVM ensembles with bagging (bootstrap aggregating) in this paper. We train each individual SVM independently using the randomly chosen training samples via a bootstrap technique. After that, they are collected to make a decision according to the majority voting. The experiment results for the intrusion detection data classification show that our proposed SVM ensemble with bagging outperforms any single SVM in terms of classification accuracy.
Keywords:Intrusion detection  Support vector machine  Ensemble  Bagging
本文献已被 CNKI 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号