Heterogeneous Ensemble Knowledge Transfer for Training Large Models in Federated Learning

Author:

Cho Yae Jee12,Manoel Andre2,Joshi Gauri1,Sim Robert2,Dimitriadis Dimitrios2

Affiliation:

1. Carnegie Mellon University

2. Microsoft Research

Abstract

Federated learning (FL) enables edge-devices to collaboratively learn a model without disclosing their private data to a central aggregating server. Most existing FL algorithms require models of identical architecture to be deployed across the clients and server, making it infeasible to train large models due to clients' limited system resources. In this work, we propose a novel ensemble knowledge transfer method named Fed-ET in which small models (different in architecture) are trained on clients, and used to train a larger model at the server. Unlike in conventional ensemble learning, in FL the ensemble can be trained on clients' highly heterogeneous data. Cognizant of this property, Fed-ET uses a weighted consensus distillation scheme with diversity regularization that efficiently extracts reliable consensus from the ensemble while improving generalization by exploiting the diversity within the ensemble. We show the generalization bound for the ensemble of weighted models trained on heterogeneous datasets that supports the intuition of Fed-ET. Our experiments on image and language tasks show that Fed-ET significantly outperforms other state-of-the-art FL algorithms with fewer communicated parameters, and is also robust against high data-heterogeneity.

Publisher

International Joint Conferences on Artificial Intelligence Organization

Cited by 26 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Nebula: An Edge-Cloud Collaborative Learning Framework for Dynamic Edge Environments;Proceedings of the 53rd International Conference on Parallel Processing;2024-08-12

2. MuSAC: Mutualistic Sensing and Communication for Mobile Crowdsensing;2024 IEEE 44th International Conference on Distributed Computing Systems (ICDCS);2024-07-23

3. Fed2PKD: Bridging Model Diversity in Federated Learning via Two-Pronged Knowledge Distillation;2024 IEEE 17th International Conference on Cloud Computing (CLOUD);2024-07-07

4. Heterogeneous Ensemble Federated Learning With GAN-Based Privacy Preservation;IEEE Transactions on Sustainable Computing;2024-07

5. Efficient knowledge management for heterogeneous federated continual learning on resource-constrained edge devices;Future Generation Computer Systems;2024-07

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