Title | Ensemble Learning Based Network Anomaly Detection Using Clustered Generalization of the Features |
Publication Type | Conference Paper |
Year of Publication | 2020 |
Authors | Radhakrishnan, C., Karthick, K., Asokan, R. |
Conference Name | 2020 2nd International Conference on Advances in Computing, Communication Control and Networking (ICACCCN) |
Date Published | dec |
Keywords | AdaBoost, Classification algorithms, Clustering algorithms, Ensemble Learning, Fitting, Generalization, hybridization, Metrics, Overfit, Prediction algorithms, Predictive models, predictive security metrics, pubcrawl, Stacking, Terminology |
Abstract | Due to the extraordinary volume of business information, classy cyber-attacks pointing the networks of all enterprise have become more casual, with intruders trying to pierce vast into and grasp broader from the compromised network machines. The vital security essential is that field experts and the network administrators have a common terminology to share the attempt of intruders to invoke the system and to rapidly assist each other retort to all kind of threats. Given the enormous huge system traffic, traditional Machine Learning (ML) algorithms will provide ineffective predictions of the network anomaly. Thereby, a hybridized multi-model system can improve the accuracy of detecting the intrusion in the networks. In this manner, this article presents a novel approach Clustered Generalization oriented Ensemble Learning Model (CGELM) for predicting the network anomaly. The performance metrics of the anticipated approach are Detection Rate (DR) and False Predictive Rate (FPR) for the two heterogeneous data sets namely NSL-KDD and UGR'16. The proposed method provides 98.93% accuracy for DR and 0.14% of FPR against Decision Stump AdaBoost and Stacking Ensemble methods. |
DOI | 10.1109/ICACCCN51052.2020.9362791 |
Citation Key | radhakrishnan_ensemble_2020 |