A Filter Based Feature Selection Approach in MSVM Using DCA and Its Application in Network Intrusion Detection

Author(s):  
Hoai An Le Thi ◽  
Anh Vu Le ◽  
Xuan Thanh Vo ◽  
Ahmed Zidna
Author(s):  
Gaddam Venu Gopal ◽  
Gatram Rama Mohan Babu

Feature selection is a process of identifying relevant feature subset that leads to the machine learning algorithm in a well-defined manner. In this paper, anovel ensemble feature selection approach that comprises of Relief  Attribute Evaluation and hybrid kernel-based support vector machine (HK-SVM) approach is proposed as a feature selection method for network intrusion detection system (NIDS). A Hybrid approach along with the combination of Gaussian and Polynomial methods is used as a kernel for support vector machine (SVM). The key issue is to select a feature subset that yields good accuracy at a minimal computational cost. The proposed approach is implemented and compared with classical SVM and simple kernel. Kyoto2006+, a bench mark intrusion detection dataset,is used for experimental evaluation and then observations are drawn.


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