journal6 ›› 2014, Vol. 35 ›› Issue (5): 33-36.DOI: 10.3969/j.issn.1007-2985.2014.05.009

• 信息与工程 • 上一篇    下一篇

基于Boosting半监督的网络安全入侵检测算法

朱韶平   

  1. (湖南财政经济学院信息管理系,湖南 长沙 410205)
  • 出版日期:2014-09-25 发布日期:2014-10-30
  • 作者简介:朱韶平(1972—),女,湖南双峰人,湖南财政经济学院信息管理系副教授,硕士,主要从事计算机应用技术、网络安全和模式识别等研究.
  • 基金资助:

    湖南省科技厅科技计划资助项目(2014FJ3057);湖南省教育厅教育科学“十二五”规划课题(XJK012CGD022);湖南省普通高等学校教学改革研究资助课题(湘教通[2012]401号文件);湖南省重点建设学科“计算机应用技术” 建设资助项目

Intrusion Detection of Network Security Based on Semi-Supervision

 ZHU  Shao-Ping   

  1. (Department of Information Management,Hunan University of Finance and Economics,Changsha 410205,China)
  • Online:2014-09-25 Published:2014-10-30

摘要:针对网络安全入侵行为升级快、隐蔽性强和随机性高等严重的安全问题,提出了一种基于半监督的网络安全入侵检测算法.该算法利用Boosting建立入侵检测模糊分类器,采用遗传算法进行迭代训练,生成最终的网络安全入侵检测模型.仿真结果表明,该算法有效提高了网络安全入侵检测的性能和效率.与SVM等先进的入侵检测方法相比,该算法能更加准确有效地检测各种类型的入侵,具有良好的检测效果和应用价值.

关键词: 网络安全, 入侵检测, 半监督学习, 模糊分类器

Abstract: For the features of fast upgrading,strong concealment,and great randomness possessed by net intrusion,a method for intrusion detection of network security based on semi-supervised learning is proposed.The Boosting is used to build the fuzzy classifier of intrusion detection.Genetic algorithm is used to improve the iterative training,and the final the intrusion detection model of network security is thus generated.The results show that this algorithm can effectively improve the performance and efficiency of intrusion detection of network security.Compared with SVM and other advanced methods for intrusion detection,this method can detect the various types of invasion with greater accuracy,better effect and higher application value.

Key words: network security, intrusion detection, semi-supervised learning, fuzzy classifier

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