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Cited 23 time in webofscience Cited 29 time in scopus
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An Ensemble of Prediction and Learning Mechanism for Improving Accuracy of Anomaly Detection in Network Intrusion Environments

Authors
ImranJamil, FaisalKim, Dohyeun
Issue Date
Sep-2021
Publisher
MDPI
Keywords
intrusion detection; intrusion accuracy; automated machine learning; CICIDS2017; UNSW-NB15
Citation
Sustainability, v.13, no.18
Journal Title
Sustainability
Volume
13
Number
18
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/84406
DOI
10.3390/su131810057
ISSN
2071-1050
Abstract
<jats:p>The connectivity of our surrounding objects to the internet plays a tremendous role in our daily lives. Many network applications have been developed in every domain of life, including business, healthcare, smart homes, and smart cities, to name a few. As these network applications provide a wide range of services for large user groups, the network intruders are prone to developing intrusion skills for attack and malicious compliance. Therefore, safeguarding network applications and things connected to the internet has always been a point of interest for researchers. Many studies propose solutions for intrusion detection systems and intrusion prevention systems. Network communities have produced benchmark datasets available for researchers to improve the accuracy of intrusion detection systems. The scientific community has presented data mining and machine learning-based mechanisms to detect intrusion with high classification accuracy. This paper presents an intrusion detection system based on the ensemble of prediction and learning mechanisms to improve anomaly detection accuracy in a network intrusion environment. The learning mechanism is based on automated machine learning, and the prediction model is based on the Kalman filter. Performance analysis of the proposed intrusion detection system is evaluated using publicly available intrusion datasets UNSW-NB15 and CICIDS2017. The proposed model-based intrusion detection accuracy for the UNSW-NB15 dataset is 98.801 percent, and the CICIDS2017 dataset is 97.02 percent. The performance comparison results show that the proposed ensemble model-based intrusion detection significantly improves the intrusion detection accuracy.</jats:p>
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