ABSTRACT:- Reduction and selection of intruder attribute in intrusion detection system play an important role in process of detection. The huge number of attribute in intruder induces a problem in detection process and increase more time in decision making process. In this paper we tried to propose a very simple and fast clustering method for intrusion detection. A hybrid scheme based on coupling two different algorithms one is particle of swarm optimization and other is k-means algorithm. The main originality of proposed approach relies on associating two techniques: extracting more information bits via specific linguistic techniques, space reduction mechanisms, and moreover arcing cluster to aggregate the best clustering result. For the validation and performance evaluation of proposed algorithm used MATLAB software and KDDCUP99 dataset 10%. This dataset contains approx 5 lacks number of instance. The process of result shows that better detection ratio in compare of k-means and k-means-GA technique of intrusion detection.
Keyword: - Feature selection, Intrusion detection system, Genetic Algorithm, Clustering.
Publication Details -
| Title | A Hybrid Model for Intrusion Detection Based on Genetic Clustering and PSO Algorithm |
| Co-Author | Gaurav Shrivastava** |
| Publications |
International journal of Master of Engineering Research and Technology
|
| Date & Year | SEP 2015 |
| Volume | Vol-2, Issue-9, 2015 Page No. 155-160 |
| ISSN No. | ISSN 2394-6172 |
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