Litcius/Paper detail

FedADMM: A federated primal-dual algorithm allowing partial participation

Han Wang, Siddartha Marella, James Anderson

20222022 IEEE 61st Conference on Decision and Control (CDC)23 citationsDOI

Abstract

Federated learning is a framework for distributed optimization that places emphasis on communication efficiency. In particular, it follows a client-server broadcast model and is appealing because of its ability to accommodate heterogeneity in client compute and storage resources, non-i.i.d. data assumptions, and data privacy. Our contribution is to offer a new federated learning algorithm, FedADMM, for solving non-convex composite optimization problems with non-smooth regularizers. We prove the convergence of FedADMM for the case when not all clients are able to participate in a given communication round under a very general sampling model.

Topics & Concepts

Computer scienceConvergence (economics)Dual (grammatical number)Federated learningRegular polygonConvex optimizationOptimization algorithmOptimization problemDistributed learningDistributed computingTheoretical computer scienceAlgorithmMathematical optimizationMathematicsEconomic growthPedagogyGeometryLiteratureEconomicsPsychologyArtPrivacy-Preserving Technologies in DataStochastic Gradient Optimization TechniquesSparse and Compressive Sensing Techniques