A Quantitative Logarithmic Transformation-Based Intrusion Detection System

Intrusion detection systems (IDS) play a vital role in protecting networks from malicious attacks. Modern IDS use machine-learning or deep-learning models to deal with the diversity of attacks that malicious users may employ. However, effective machine-learning methods incur a considerable cost in b...

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Bibliographic Details
Main Authors: Blue Lan, Ta-Chun Lo, Rico Wei, Heng-Yu Tang, Ce-Kuen Shieh
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10050849/
Description
Summary:Intrusion detection systems (IDS) play a vital role in protecting networks from malicious attacks. Modern IDS use machine-learning or deep-learning models to deal with the diversity of attacks that malicious users may employ. However, effective machine-learning methods incur a considerable cost in both the pretraining stage and the online detection process itself. Accordingly, this study proposes a quantitative logarithmic transformation-based intrusion detection system (QLT-IDS) that uses a straightforward statistical approach to analyze network behavior. Compared with machine-learning or deep-learning-based IDS methods, the proposed system requires neither a time-consuming and expensive data collection and training process, nor a GPU-included device to achieve a real-time detection performance. Furthermore, the system can deal not only with North-South attacks, but also East-West attacks, which pose a significant risk in real-world operations. The effectiveness of the proposed system is evaluated for both real-world campus network traffic and simulated traffic. The results confirm that QLT-IDS is able to detect a wide range of malicious attacks with a high precision, even under high down-sampling rate of the NetFlow records.
ISSN:2169-3536