2024
DOI: 10.1007/s40747-024-01388-1
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Meta learning-based few-shot intrusion detection for 5G-enabled industrial internet

Yu Yan,
Yu Yang,
Fang Shen
et al.

Abstract: With the formation and popularization of the 5G-enabled industrial internet, cybersecurity risks are increasing, and the limited number of attack samples, such as zero-day, leaves a short response time for security protectors, making it substantially more difficult to protect industrial control systems from new types of malicious attacks. Traditional supervised intrusion detection models rely on a large number of samples for training and their performance needs to be improved. Therefore, there is an urgent nee… Show more

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