Litcius/Paper detail

Federated Learning Via Inexact ADMM

Shenglong Zhou, Geoffrey Ye Li

2023IEEE Transactions on Pattern Analysis and Machine Intelligence68 citationsDOI

Abstract

One of the crucial issues in federated learning is how to develop efficient optimization algorithms. Most of the current ones require full device participation and/or impose strong assumptions for convergence. Different from the widely-used gradient descent-based algorithms, in this article, we develop an inexact alternating direction method of multipliers (ADMM), which is both computation- and communication-efficient, capable of combating the stragglers' effect, and convergent under mild conditions. Furthermore, it has high numerical performance compared with several state-of-the-art algorithms for federated learning.

Topics & Concepts

Computer scienceConvergence (economics)ComputationGradient descentFederated learningArtificial intelligenceDescent (aeronautics)State (computer science)Mathematical optimizationAlgorithmMachine learningMathematicsArtificial neural networkEconomic growthEconomicsEngineeringAerospace engineeringPrivacy-Preserving Technologies in DataIndoor and Outdoor Localization TechnologiesStochastic Gradient Optimization Techniques
Federated Learning Via Inexact ADMM | Litcius