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High-Precision Edge-Cloud Collaboration with Federated Learning in Edge Optical Network

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Abstract

This paper proposes a high-precision edge-cloud collaborative federated learning (ECFL) scheme based on data matching in Metro Optical Network. ECFL improves the training accuracy of machine learning and reduces the network-blocking rate.

© 2021 The Author(s)

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