Litcius/Paper detail

FedSkip: Combatting Statistical Heterogeneity with Federated Skip Aggregation

Ziqing Fan, Yanfeng Wang, Jiangchao Yao, Lingjuan Lyu, Ya Zhang, Qi Tian

20222022 IEEE International Conference on Data Mining (ICDM)14 citationsDOI

Abstract

The statistical heterogeneity of the non-independent and identically distributed (non-IID) data in local clients significantly limits the performance of federated learning. Previous attempts like FedProx, SCAFFOLD, MOON, FedNova and FedDyn resort to an optimization perspective, which requires an auxiliary term or re-weights local updates to calibrate the learning bias or the objective inconsistency. However, in addition to previous explorations for improvement in federated averaging, our analysis shows that another critical bottleneck is the poorer optima of client models in more heterogeneous conditions. We thus introduce a data-driven approach called FedSkip to improve the client optima by periodically skipping federated averaging and scattering local models to the cross devices. We provide theoretical analysis of the possible benefit from FedSkip and conduct extensive experiments on a range of datasets to demonstrate that FedSkip achieves much higher accuracy, better aggregation efficiency and competing communication efficiencys. Source code is available at: https://github.com/MediaBrain-SJTU/FedSkip.

Topics & Concepts

BottleneckComputer scienceLocal optimumIndependent and identically distributed random variablesPerspective (graphical)Code (set theory)Federated learningData aggregatorData miningDistributed computingArtificial intelligenceComputer networkStatisticsRandom variableMathematicsProgramming languageEmbedded systemSet (abstract data type)Wireless sensor networkPrivacy-Preserving Technologies in DataTraffic Prediction and Management TechniquesMobile Crowdsensing and Crowdsourcing