Title of article :
An Intelligent Intrusion Detection System Using Genetic Algorithms and Features Selection
Author/Authors :
Shirazi, H.M. Faculty of ICT - Malek-Ashtar University of Tchnology - Tehran, Iran , Kalaji, Y. Faculty of ICT - Malek-Ashtar University of Tchnology - Tehran, Iran
Abstract :
The reports show a rapid growth in the numbers of attacks to the information and communication systems. Also, we
witness smarter behaviors from the attackers. Thus, to prevent our systems from these attackers, we need to create
smarter intrusion detection systems. In this paper, a new intelligent intrusion detection system has been proposed using
genetic algorithms. In this system, at first, the network connection features were ranked according to their importance
in detecting attack using information theory measures. Then, the network traffic linear classifiers based on genetic
algorithms have been designed. These classifiers were trained and tested using KDD99 data sets. A detection engine
based on these classifiers was build and experimented. The experimental results showed a detection rate up to 92.94%.
This engine can be used in real-time mode.
Keywords :
Intrusion Detection Systems , Anomaly Detection , Genetic Algorithms
Journal title :
Astroparticle Physics