Detection of illegal traffic pattern using Hybrid Improved CART and Multiple Extreme Learning Machine Approach

Main Article Content

Lekha J
Padmavathi Ganapathi

Abstract

In the proposed hybrid intrusion detection process, misuse detection and anomaly detection model is integrated to detect the attack in traffic pattern. In misuse detection model, the traffic pattern is classified into known attack and not known attack. Each extracted normal data set does not have known attack and it contains small amount of varied connection patterns than overall normal data set. Anomaly detection model classifies the not known attack as normal data set and unknown attack thus improving the performance of normal traffic behavior. Experiment is carried out using NSL –KDD dataset and performance of proposed approach is compared with traditional learning approaches in terms of training time, testing time, false positive ratio and detection ratio. The proposed method detects the known attacks and unknown attacks with ratio of 99.8 % and 52% respectively.

Article Details

How to Cite
J, L., & Ganapathi, P. (2022). Detection of illegal traffic pattern using Hybrid Improved CART and Multiple Extreme Learning Machine Approach. International Journal of Communication Networks and Information Security (IJCNIS), 9(2). https://doi.org/10.17762/ijcnis.v9i2.2053 (Original work published June 25, 2017)
Section
Research Articles