BriefGPT.xyz
Dec, 2022
ResFed: 通过传输深度压缩残差实现通信高效的联邦学习
ResFed: Communication Efficient Federated Learning by Transmitting Deep Compressed Residuals
HTML
PDF
Rui Song, Liguo Zhou, Lingjuan Lyu, Andreas Festag, Alois Knoll
TL;DR
提出一种基于残差的联邦学习(ResFed)框架,通过稀疏化和量化残差,实现通信效率的提高,大大减少了在无线网络中应用联邦学习所需要的大量通信成本。
Abstract
federated learning
enables cooperative training among massively distributed clients by sharing their learned local model parameters. However, with increasing model size, deploying
federated learning
requires a la
→