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Practical real-time intrusion detection using machine learning approaches
Authors:Phurivit SangkatsaneeNaruemon Wattanapongsakorn  Chalermpol Charnsripinyo
Affiliation:a Department of Computer Engineering, Faculty of Engineering, King Mongkut’s University of Technology Thonburi, 126 Pracha-utid Road, Toongkru, Bangkok 10140, Thailand
b National Electronics and Computer Technology Center, 112 Phahonyothin Road, Klong Luang, Pathumthani 12120, Thailand
Abstract:The growing prevalence of network attacks is a well-known problem which can impact the availability, confidentiality, and integrity of critical information for both individuals and enterprises. In this paper, we propose a real-time intrusion detection approach using a supervised machine learning technique. Our approach is simple and efficient, and can be used with many machine learning techniques. We applied different well-known machine learning techniques to evaluate the performance of our IDS approach. Our experimental results show that the Decision Tree technique can outperform the other techniques. Therefore, we further developed a real-time intrusion detection system (RT-IDS) using the Decision Tree technique to classify on-line network data as normal or attack data. We also identified 12 essential features of network data which are relevant to detecting network attacks using the information gain as our feature selection criterions. Our RT-IDS can distinguish normal network activities from main attack types (Probe and Denial of Service (DoS)) with a detection rate higher than 98% within 2 s. We also developed a new post-processing procedure to reduce the false-alarm rate as well as increase the reliability and detection accuracy of the intrusion detection system.
Keywords:Network intrusion detection  Machine learning  Denial of Service  Probe
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