期刊文献+

A Neuro-genetic Based Short-term Forecasting Framework for Network Intrusion Prediction System 被引量:7

A Neuro-genetic Based Short-term Forecasting Framework for Network Intrusion Prediction System
在线阅读 下载PDF
导出
摘要 Information systems are one of the most rapidly changing and vulnerable systems, where security is a major issue. The number of security-breaking attempts originating inside organizations is increasing steadily. Attacks made in this way, usually done by "authorized" users of the system, cannot be immediately traced. Because the idea of filtering the traffic at the entrance door, by using firewalls and the like, is not completely successful, the use of intrusion detection systems should be considered to increase the defense capacity of an information system. An intrusion detection system (IDS) is usually working in a dynamically changing environment, which forces continuous tuning of the intrusion detection model, in order to maintain sufficient performance. The manual tuning process required by current IDS depends on the system operators in working out the tuning solution and in integrating it into the detection model. Furthermore, an extensive effort is required to tackle the newly evolving attacks and a deep study is necessary to categorize it into the respective classes. To reduce this dependence, an automatically evolving anomaly IDS using neuro-genetic algorithm is presented. The proposed system automatically tunes the detection model on the fly according to the feedback provided by the system operator when false predictions are encountered. The system has been evaluated using the Knowledge Discovery in Databases Conference (KDD 2009) intrusion detection dataset. Genetic paradigm is employed to choose the predominant features, which reveal the occurrence of intrusions. The neuro-genetic IDS (NGIDS) involves calculation of weightage value for each of the categorical attributes so that data of uniform representation can be processed by the neuro-genetic algorithm. In this system unauthorized invasion of a user are identified and newer types of attacks are sensed and classified respectively by the neuro-genetic algorithm. The experimental results obtained in this work show that the system achieves improvement in terms of misclassification cost when compared with conventional IDS. The results of the experiments show that this system can be deployed based on a real network or database environment for effective prediction of both normal attacks and new attacks. Information systems are one of the most rapidly changing and vulnerable systems, where security is a major issue. The number of security-breaking attempts originating inside organizations is increasing steadily. Attacks made in this way, usually done by "authorized" users of the system, cannot be immediately traced. Because the idea of filtering the traffic at the entrance door, by using firewalls and the like, is not completely successful, the use of intrusion detection systems should be considered to increase the defense capacity of an information system. An intrusion detection system (IDS) is usually working in a dynamically changing environment, which forces continuous tuning of the intrusion detection model, in order to maintain sufficient performance. The manual tuning process required by current IDS depends on the system operators in working out the tuning solution and in integrating it into the detection model. Furthermore, an extensive effort is required to tackle the newly evolving attacks and a deep study is necessary to categorize it into the respective classes. To reduce this dependence, an automatically evolving anomaly IDS using neuro-genetic algorithm is presented. The proposed system automatically tunes the detection model on the fly according to the feedback provided by the system operator when false predictions are encountered. The system has been evaluated using the Knowledge Discovery in Databases Conference (KDD 2009) intrusion detection dataset. Genetic paradigm is employed to choose the predominant features, which reveal the occurrence of intrusions. The neuro-genetic IDS (NGIDS) involves calculation of weightage value for each of the categorical attributes so that data of uniform representation can be processed by the neuro-genetic algorithm. In this system unauthorized invasion of a user are identified and newer types of attacks are sensed and classified respectively by the neuro-genetic algorithm. The experimental results obtained in this work show that the system achieves improvement in terms of misclassification cost when compared with conventional IDS. The results of the experiments show that this system can be deployed based on a real network or database environment for effective prediction of both normal attacks and new attacks.
出处 《International Journal of Automation and computing》 EI 2009年第4期406-414,共9页 国际自动化与计算杂志(英文版)
关键词 Genetic algorithm intrusion detection system (IDS) neural networks weightage calculation knowledge discovery in databases (KDD) classification. Genetic algorithm, intrusion detection system (IDS), neural networks, weightage calculation, knowledge discovery in databases (KDD), classification.
  • 相关文献

参考文献10

  • 1D. Naccache.Secure and Practical Identity-based Encryp- tion[].IET Information Security.2007
  • 2Chao-Wen Chang,Heng Pan,Hong-Yong Jia.A Secure Short Message Communication Protocol[J].International Journal of Automation and computing,2008,5(2):202-207. 被引量:1
  • 3R. Curry,P. Lichodzijewski,M. I. Heywood.Scaling Ge- netic Programming to Large Datasets Using Hierarchical Dynamic Subset Selection[].IEEE Transactions on Systems Man and Cybernetics – Part B: Cybernetics.2007
  • 4Shengxiang Yang,Renato Tinós.A Hybrid Immigrants Scheme for Genetic Algorithms in Dynamic Environments[J].International Journal of Automation and computing,2007,4(3):243-254. 被引量:9
  • 5F. Berzal,J. C. Cubero.An Effective Algorithm for Min- ing Subspace Clusters in Categorical Datasets[].Data Mining and Knowledge Discovery.2007
  • 6S. M. Bridges,R. B. Vaughn.Fuzzy Data Mining and Ge- netic Algorithms Applied to Intrusion Detection[].Pro- ceedings of the th Annual Canadian Information Tech- nology Security Symposium.2000
  • 7K. Triantafyllopoulos,J. Pikoulas.Multivariate Bayesian Regression Applied to the Problem of Network Security[].Journal of Forecasting.2002
  • 8.Java Neural Network Simulator[]..
  • 9.KDD Cup 1999 Data[]..1999
  • 10Ye,Nong,Emran,Syed Masum,Chen,Qiang,Vibert,Sean.Multivariate statistical analysis of audit trails for host-based intrusion detection[].IEEE Transactions on Computers.2002

二级参考文献8

共引文献8

同被引文献22

引证文献7

二级引证文献17

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部