Transformer-Based Multi-Source Transfer Learning for Intrusion Detection Models with Privacy and Efficiency Balance
Baoqiu Yang, Guoyin Zhang, Kunpeng Wang

TL;DR
This paper introduces TrMulS, a new intrusion detection framework that improves cross-domain adaptability, privacy, and detection accuracy using federated learning and transformers.
Contribution
The novel TrMulS framework combines federated learning, GANs, and transformers for efficient and private cross-domain intrusion detection.
Findings
TrMulS significantly improves detection accuracy in cross-domain scenarios.
The framework effectively minimizes feature distribution differences between domains using MMD.
Experiments on standard datasets validate the model's effectiveness and privacy-preserving capabilities.
Abstract
The current intrusion detection methods suffer from deficiencies in terms of cross-domain adaptability, privacy preservation, and limited effectiveness in detecting minority-class attacks. To address these issues, a novel intrusion detection model framework, TrMulS, is proposed that integrates federated learning, generative adversarial networks with multispace feature enhancement ability, and transformers with multi-source transfer ability. First, at each institution (source domain), local spatial features are extracted through a CNN, multiple subsets are constructed (to solve the feature singularity problem), and the multihead self-attention mechanism of the transformer is utilized to capture the correlation of features. Second, the synthetic samples of the target domain are generated on the basis of the improved Exchange-GAN, and the cross-domain transfer module is designed by…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Advanced Malware Detection Techniques · Anomaly Detection Techniques and Applications
