Federated learning-based in-network traffic analysis on IoT edge
The rise of IoT-connected devices has led to an increase in collected data for service and traffic analysis, but also to emerging threats and attacks. In-network machine learning-based attack detection has proven effective in fast response, but scaling to distributed IoT edge devices risks increasin...
Main Authors: | Zang, M, Zheng, C, Koziak, T, Zilberman, N, Dittmann, L |
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Format: | Conference item |
Language: | English |
Published: |
IEEE
2023
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