Analysis on: Intrusions Detection Based On Support Vector Machine Optimized with Swarm Intelligence?
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.3, No. 12)Publication Date: 2014-12-30
Authors : Pankaj Shinde; Thaksen Parvat;
Page : 559-566
Keywords : Intrusion Detection; SVM; PSO; ABC and NSLKDD;
Abstract
This Intrusion detection system has become popular security intelligence component to provide security with capability of detecting attacks and patterns. Now day’s globally use of IDS raising some lagging points like detecting false alert to be checked. Here new approach of support vector mechanism with swarm intelligence for selecting appropriate parameters to achieve high rate of attack detection and lower the false alarm than regular IDS. Recently, Support Vector Machines (SVM) has been employed to provide potential solutions for IDS. With its many variants for classification SVM is a state-of-the-art machine learning algorithm. However, the performance of SVM depends on selection of the appropriate parameters. In this paper we propose an IDS model based on Information Gain for feature selection combined with the SVM classifier. The parameters for SVM will be selected by a swarm intelligence algorithm (Particle Swarm Optimization or Artificial Bee Colony). We use the NSL KDD data set and show that our model can achieve higher detection rate and lower false alarm rate than regular SVM.
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Last modified: 2014-12-31 19:22:21