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Theoretical Analysis of Impact of Delayed Updates on Decentralized Federated Learning

Authors :
Zeng, Yong
Liu, Siyuan
Xu, Zhiwei
Tian, Jie
Zeng, Yong
Liu, Siyuan
Xu, Zhiwei
Tian, Jie
Publication Year :
2023

Abstract

Decentralized Federated learning is a distributed edge intelligence framework by exchanging parameter updates instead of training data among participators, in order to retrain or fine-tune deep learning models for mobile intelligent applications. Considering the various topologies of edge networks in mobile internet, the impact of transmission delay of updates during model training is non-negligible for data-intensive intelligent applications on mobile devices, e.g., intelligent medical services, automated driving vehicles, etc.. To address this problem, we analyze the impact of delayed updates for decentralized federated learning, and provide a theoretical bound for these updates to achieve model convergence. Within the theoretical bound of updating period, the latest versions for the delayed updates are reused to continue aggregation, in case the model parameters from a specific neighbor are not collected or updated in time.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438495572
Document Type :
Electronic Resource