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arXiv (Cornell University)
Caesar: A Low-deviation Compression Approach for Efficient Federated Learning
December 2024 • Jiaming Yan, Jianchun Liu, Hongli Xu, L. Q. Huang, Jun Gong, Xudong Liu, Kun Hou
Compression is an efficient way to relieve the tremendous communication overhead of federated learning (FL) systems. However, for the existing works, the information loss under compression will lead to unexpected model/gradient deviation for the FL training, significantly degrading the training performance, especially under the challenges of data heterogeneity and model obsolescence. To strike a delicate trade-off between model accuracy and traffic cost, we propose Caesar, a novel FL framework with a low-deviation…
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