Lazily Aggregated Quantized Gradient Innovation for Communication-Efficient Federated Learning

IEEE Transactions on Pattern Analysis and Machine Intelligence(2022)

引用 77|浏览186
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摘要
This paper focuses on communication-efficient federated learning problem, and develops a novel distributed quantized gradient approach, which is characterized by adaptive communications of the quantized gradients. Specifically, the federated learning builds upon the server-worker infrastructure, where the workers calculate local gradients and upload them to the server; then the server obtain the g...
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关键词
Quantization (signal),Servers,Technological innovation,Convergence,Frequency modulation,Distributed databases,Collaborative work
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