Network Security White Papers
Modeling Intrusion Detection Systems Using Linear Genetic Programming Approach
Overview This paper investigates the suitability of Linear Genetic Programming (LGP) technique to model efficient intrusion detection systems, while comparing its performance with artificial neural networks and support vector machines. Due to increasing incidents of cyber attacks and, building effective Intrusion Detection Systems (IDSs) are essential for protecting information systems security, and yet it remains an elusive goal and a great challenge. It also investigates key feature identification for building efficient and effective IDSs. Through a variety of comparative experiments, it is found that, with appropriately chosen population size, program size, crossover rate and mutation rate, linear genetic programs could outperform support vector machines and neural networks in terms of detection accuracy. Using key features gives notable performance in terms of detection accuracies.
| Publisher | Oklahoma State University | File Format | |
|---|---|---|---|
| Date Published | December 2005 | ||
| Format | White Papers | ||
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