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May, 2024
局部估计的全局扰动优于本地扰动的联邦锐度感知最小化
Locally Estimated Global Perturbations are Better than Local Perturbations for Federated Sharpness-aware Minimization
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Ziqing Fan, Shengchao Hu, Jiangchao Yao, Gang Niu, Ya Zhang...
TL;DR
通过在联邦学习中本地估计全局扰动的方向,FedLESAM算法提高了联邦Sharpness-Aware Minimization(SAM)方法的质量和效率。
Abstract
In
federated learning
(FL), the multi-step update and
data heterogeneity
among clients often lead to a loss landscape with sharper minima, degenerating the performance of the resulted global model. Prevalent fede
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