An Enhanced Hybrid Intrusion Detection Mechanism Based on Chicken Swarm Optimization and Naïve-Bayes Method
A.Shanthi Sona1, N. Sasirekha2

1Mrs. A.SHANTHI SONA, PG and Research Department of Computer Science, Tiruppur Kumaran College for women, Tirupur, India.
2Dr. N. SASIREKHA, PG and Research Department of Computer Science, Vidyasagar College of Arts and Science, Udumalpet, India.

Manuscript received on 05 August 2019. | Revised Manuscript received on 12 August 2019. | Manuscript published on 30 September 2019. | PP: 5906-5910 | Volume-8 Issue-3 September 2019 | Retrieval Number: C4737098319/19©BEIESP | DOI: 10.35940/ijrte.C4737.098319
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Abstract: The major important factor of network intrusion detection is to avoid malicious process in network. Since, existing modules are out-dated because of improper authentication and the network may get affected because of new attacks and malwares. In this research, Hybrid module is formed by using Chicken Swarm Optimization and Naive Bayes classifier (HCSO-NB) for classification of intrusion data. The hybrid method is introduced to detect the features efficiently in complex dataset because strategy which is designed to be capable of detecting huge data in network. Some traditional methods results in serious limitations in case of complex datasets. The algorithms are shared their properties together to discover better optimization results and the classification precisions values. This paper examines the feature selection performance by utilizing NSL-KDD-99 dataset and comparing it with the Swarm Intelligence (SI), Naïve-Bayes classifier and proposed HCSO-NB algorithms. The proposed classification process designed in NETBEANS 8.2 tool. Experiments show that proposed HCSO-NB successfully improved the accuracy.
Keywords- Chicken Swarm Optimization, Classification, Network Intrusion Detection, Naïve-Bayes Classifier, Swarm Intelligence

Scope of the Article: Classification