FedGiA: An Efficient Hybrid Algorithm for Federated Learning
Shenglong Zhou, Geoffrey Ye Li
Abstract
Federated learning has shown its advances recently but is still facing many challenges, such as how algorithms save communication resources and reduce computational costs, and whether they converge. To address these critical issues, we propose a hybrid federated learning algorithm (FedGiA) that combines the gradient descent and the inexact alternating direction method of multipliers. The proposed algorithm is more communication- and computation-efficient than several state-of-the-art algorithms theoretically and numerically. Moreover, it also converges globally under mild conditions.
Topics & Concepts
Computer scienceComputationGradient descentAlgorithmConvergence (economics)State (computer science)Stochastic gradient descentArtificial intelligenceArtificial neural networkEconomic growthEconomicsPrivacy-Preserving Technologies in DataStochastic Gradient Optimization TechniquesIndoor and Outdoor Localization Technologies