FedNew
Newton-based FL optimizer
An optimized Newton-type method for Federated Learning to balance communication efficiency and privacy preservation in machine learning model updates.
FedNew: A Communication-Efficient and Privacy-Preserving Newton-Type Method for Federated Learning
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Language: MATLAB
last commit: over 3 years ago Related projects:
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