Contrastive Self-Supervised Network Intrusion Detection Using Augmented Negative Pairs

Wilkie, Jack; Hanan Hindy; Tachtatzis, Christos; Atkinson, Robert;

Abstract


Network intrusion detection remains a critical challenge in cybersecurity. While supervised machine learning models achieve state-of-the-art performance, their reliance on large labelled datasets makes them impractical for many real-world applications. Anomaly detection methods, which train exclusively on benign traffic to identify malicious activity, suffer from high false positive rates, limiting their usability. Recently, self-supervised learning techniques have demonstrated improved performance with lower false positive rates by learning discriminative latent representations of benign traffic. In particular, contrastive self-supervised models achieve this by minimising the distance between similar (positive) views of benign traffic while maximising it between dissimilar (negative) views. Existing approaches generate positive views through data augmentation and treat other samples as negative. In contrast, this work introduces Contrastive Learning using Augmented Negative pairs (CLAN), a novel paradigm for network intrusion detection where augmented samples are treated as negative views - representing potentially malicious distributions - while other benign samples serve as positive views. This approach enhances both classification accuracy and inference efficiency after pretraining on benign traffic. Experimental evaluation on the Lycos2017 dataset demonstrates that the proposed method surpasses existing self-supervised and anomaly detection techniques in a binary classification task. Furthermore, when fine-tuned on a limited labelled dataset, the proposed approach achieves superior multi-class classification performance compared to existing self-supervised models.


Other data

Title Contrastive Self-Supervised Network Intrusion Detection Using Augmented Negative Pairs
Authors Wilkie, Jack; Hanan Hindy ; Tachtatzis, Christos; Atkinson, Robert
Keywords Anomaly Detection;Contrastive Learning;Machine Learning;Network Intrusion Detection Systems;Self-Supervised Learning;Computer Science;Learning;Artificial Intelligence;Cryptography and Security;Networking and Internet Architecture
Issue Date 1-Jan-2025
Conference Proceedings of the 2025 IEEE International Conference on Cyber Security and Resilience Csr 2025
Description 
Published in: Proceedings of IEEE Conference on Cyber Security and Resilience (CSR), 2025. Official version: https://doi.org/10.1109/CSR64739.2025.11129979 Code: https://github.com/jackwilkie/CLAN
ISBN [9798331535919]
DOI 10.1109/CSR64739.2025.11129979
Scopus ID 2-s2.0-105016239090

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