CRLGDec 11, 2025

Adaptive Intrusion Detection System Leveraging Dynamic Neural Models with Adversarial Learning for 5G/6G Networks

arXiv:2512.10637v22 citations
Originality Incremental advance
AI Analysis

This work addresses network security for 5G/6G systems, offering an incremental improvement over traditional IDS methods by reducing retraining needs and enhancing robustness.

The paper tackled the problem of detecting novel and evolving cyber threats in 5G/6G networks by proposing an IDS framework that uses adversarial training and dynamic neural networks, achieving 82.33% accuracy for multiclass attack classification while resisting dataset poisoning.

Intrusion Detection Systems (IDS) are critical components in safeguarding 5G/6G networks from both internal and external cyber threats. While traditional IDS approaches rely heavily on signature-based methods, they struggle to detect novel and evolving attacks. This paper presents an advanced IDS framework that leverages adversarial training and dynamic neural networks in 5G/6G networks to enhance network security by providing robust, real-time threat detection and response capabilities. Unlike conventional models, which require costly retraining to update knowledge, the proposed framework integrates incremental learning algorithms, reducing the need for frequent retraining. Adversarial training is used to fortify the IDS against poisoned data. By using fewer features and incorporating statistical properties, the system can efficiently detect potential threats. Extensive evaluations using the NSL- KDD dataset demonstrate that the proposed approach provides better accuracy of 82.33% for multiclass classification of various network attacks while resisting dataset poisoning. This research highlights the potential of adversarial-trained, dynamic neural networks for building resilient IDS solutions.

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