Sohom Mukherjee, Nicolas Loizou, Sebastian U. Stich
TL;DR本文介绍了一种基于 Stochastic Polyak Stepsize 的联邦学习算法 FedSPS,该算法具有局部自适应性和近乎无参数,且可以达到与 FedAvg 相当的优化性能。
Abstract
State-of-the-art federated learning algorithms such as FedAvg require carefully tuned stepsizes to achieve their best performance. The improvements proposed by existing adaptive federated methods involve tuning of additional →