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A Transferable Deep Learning Framework for Improving the Accuracy of Internet of Things Intrusion Detection

Author

Listed:
  • Haedam Kim

    (Department of Convergence Security Engineering, Sungshin Women’s University, Seoul 02844, Republic of Korea)

  • Suhyun Park

    (Department of Convergence Security Engineering, Sungshin Women’s University, Seoul 02844, Republic of Korea)

  • Hyemin Hong

    (Department of Convergence Security Engineering, Sungshin Women’s University, Seoul 02844, Republic of Korea)

  • Jieun Park

    (Department of Convergence Security Engineering, Sungshin Women’s University, Seoul 02844, Republic of Korea)

  • Seongmin Kim

    (Department of Convergence Security Engineering, Sungshin Women’s University, Seoul 02844, Republic of Korea)

Abstract

As the size of the IoT solutions and services market proliferates, industrial fields utilizing IoT devices are also diversifying. However, the proliferation of IoT devices, often intertwined with users’ personal information and privacy, has led to a continuous surge in attacks targeting these devices. However, conventional network-level intrusion detection systems with pre-defined rulesets are gradually losing their efficacy due to the heterogeneous environments of IoT ecosystems. To address such security concerns, researchers have utilized ML-based network-level intrusion detection techniques. Specifically, transfer learning has been dedicated to identifying unforeseen malicious traffic in IoT environments based on knowledge distillation from the rich source domain data sets. Nevertheless, since most IoT devices operate in heterogeneous but small-scale environments, such as home networks, selecting adequate source domains for learning proves challenging. This paper introduces a framework designed to tackle this issue. In instances where assessing an adequate data set through pre-learning using transfer learning is non-trivial, our proposed framework advocates the selection of a data set as the source domain for transfer learning. This selection process aims to determine the appropriateness of implementing transfer learning, offering the best practice in such scenarios. Our evaluation demonstrates that the proposed framework successfully chooses a fitting source domain data set, delivering the highest accuracy.

Suggested Citation

  • Haedam Kim & Suhyun Park & Hyemin Hong & Jieun Park & Seongmin Kim, 2024. "A Transferable Deep Learning Framework for Improving the Accuracy of Internet of Things Intrusion Detection," Future Internet, MDPI, vol. 16(3), pages 1-17, February.
  • Handle: RePEc:gam:jftint:v:16:y:2024:i:3:p:80-:d:1347422
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    References listed on IDEAS

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    1. Xu Zhang & Fei Chen & Tao Yu & Jiye An & Zhengxing Huang & Jiquan Liu & Weiling Hu & Liangjing Wang & Huilong Duan & Jianmin Si, 2019. "Real-time gastric polyp detection using convolutional neural networks," PLOS ONE, Public Library of Science, vol. 14(3), pages 1-16, March.
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