Applied Sciences (Jun 2024)

Open DGML: Intrusion Detection Based on Open-Domain Generation Meta-Learning

  • Kaida Jiang,
  • Futai Zou,
  • Hongjun Huang,
  • Liwen Zheng,
  • Haochen Zhai

DOI
https://doi.org/10.3390/app14135426
Journal volume & issue
Vol. 14, no. 13
p. 5426

Abstract

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Network security is crucial for national infrastructure, but the increasing number of network intrusions poses significant challenges. To address this issue, we propose Open DGML, a framework based on open-domain generalization meta-learning for intrusion detection. Our approach incorporates flow imaging, data augmentation, and open-domain generalization meta-learning algorithms. Experimental results on the ISCX2012, NDSec-1, CICIDS2017, and CICIDS2018 datasets demonstrate the effectiveness of Open DGML. Compared to state-of-the-art models (HAST-IDS, CLAIRE, FC-Net), Open DGML achieves higher accuracy and detection rates. In closed-domain settings, it achieves an average accuracy of 96.52% and a detection rate of 97.04%. In open-domain settings, it achieves an average accuracy of 68.73% and a detection rate of 61.49%. These results highlight the superior performance of Open DGML, particularly in open-domain scenarios, for effective identification of various network attacks.

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