BriefGPT.xyz
Jan, 2024
关于联邦学习的原则性本地优化方法
On Principled Local Optimization Methods for Federated Learning
HTML
PDF
Honglin Yuan
TL;DR
本篇论文以三个方向推动本地方法的理论基础:(1)建立FedAvg的尖锐界限;(2)提出了FedAvg的有原则的加速方法FedAc;(3)研究了扩展经典平滑设置的Federated Composite Optimization问题。
Abstract
federated learning
(FL), a distributed learning paradigm that scales on-device learning collaboratively, has emerged as a promising approach for decentralized AI applications. Local optimization methods such as
federate
→