Back to Search Start Over

Personalized Federated Learning for Heterogeneous Clients with Clustered Knowledge Transfer

Authors :
Cho, Yae Jee
Wang, Jianyu
Chiruvolu, Tarun
Joshi, Gauri
Publication Year :
2021

Abstract

Personalized federated learning (FL) aims to train model(s) that can perform well for individual clients that are highly data and system heterogeneous. Most work in personalized FL, however, assumes using the same model architecture at all clients and increases the communication cost by sending/receiving models. This may not be feasible for realistic scenarios of FL. In practice, clients have highly heterogeneous system-capabilities and limited communication resources. In our work, we propose a personalized FL framework, PerFed-CKT, where clients can use heterogeneous model architectures and do not directly communicate their model parameters. PerFed-CKT uses clustered co-distillation, where clients use logits to transfer their knowledge to other clients that have similar data-distributions. We theoretically show the convergence and generalization properties of PerFed-CKT and empirically show that PerFed-CKT achieves high test accuracy with several orders of magnitude lower communication cost compared to the state-of-the-art personalized FL schemes.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2109.08119
Document Type :
Working Paper