Litcius/Paper detail

Decentralized Federated Learning via Mutual Knowledge Transfer

Chengxi Li, Gang Li, Pramod K. Varshney

2021IEEE Internet of Things Journal122 citationsDOIOpen Access PDF

Abstract

In this article, we investigate the problem of decentralized federated learning (DFL) in Internet of Things (IoT) systems, where a number of IoT clients train models collectively for a common task without sharing their private training data in the absence of a central server. Most of the existing DFL schemes are composed of two alternating steps, i.e., model updating and model averaging. However, averaging model parameters directly to fuse different models at the local clients suffers from client-drift, especially when the training data are heterogeneous across different clients. This leads to slow convergence and degraded learning performance. As a possible solution, we propose the DFL via a mutual knowledge transfer (Def-KT) algorithm, where local clients fuse models by transferring their learned knowledge to each other. Our experiments on the MNIST, Fashion-MNIST, CIFAR-10, and CIFAR-100 data sets reveal that the proposed Def-KT algorithm significantly outperforms the baseline DFL methods with model averaging, i.e., Combo and FullAvg, especially when the training data are not independent and identically distributed (non-IID) across different clients.

Topics & Concepts

Computer scienceFederated learningFuse (electrical)Independent and identically distributed random variablesConvergence (economics)Transfer of learningData modelingTask (project management)Artificial intelligenceKnowledge transferTask analysisTraining setTransfer (computing)Machine learningDistributed learningBaseline (sea)Distributed computingDistributed databaseKnowledge sharingReduction (mathematics)The InternetMutual informationData sharingData miningPrivacy-Preserving Technologies in DataMobile Crowdsensing and CrowdsourcingIoT and Edge/Fog Computing