A Hybrid Approach for Intrusion Detection using Misuse Detection and Genetic Algorithm
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Abstract
Network Security has become the crucial issue for most of the organizations in the
recent past. Mostly discussions on security include the tools and methods that can be
deployed to protect and defend the networks. The use of network security tools have
increased over the years due to increase in security threats. Many methods have been
developed to secure computer networks and communication over the Internet. In
today’s fast-changing Information technology world, even the best available security
is deficient for the latest vulnerabilities. In order to protect data and system integrity,
Intrusion Detection has become central area for researchers. Intrusion detection
method is one such method which has gained importance over the past few years.
In this dissertation, we have proposed an algorithm based on combination of
Misuse Detection and Genetic Algorithm approach. We are using feature selection
technique to extract important features from dataset. Genetic Algorithm is used for
evolving best fit rules; this algorithm works on the principle of survival of fittest. For
training and testing the rules, KDD Cup'99 datasets are used. The results of Misuse
Detection and Proposed System are compared on various parameters like detection
rates, false positive rates and number of attacks detected. Results prove that proposed
approach has better detection rates and low false positive rates than Misuse Detection.
Proposed System detects ten different types of attacks with high detection rates and
low false positive rates. This System is also compared with existing systems which
were described in research papers and results shows that our system gives less false positive rates than existing systems.
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ME, CSED
