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Papers/Personalized Federated Learning using Hypernetworks

Personalized Federated Learning using Hypernetworks

Aviv Shamsian, Aviv Navon, Ethan Fetaya, Gal Chechik

2021-03-08Personalized Federated LearningFederated Learning
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Abstract

Personalized federated learning is tasked with training machine learning models for multiple clients, each with its own data distribution. The goal is to train personalized models in a collaborative way while accounting for data disparities across clients and reducing communication costs. We propose a novel approach to this problem using hypernetworks, termed pFedHN for personalized Federated HyperNetworks. In this approach, a central hypernetwork model is trained to generate a set of models, one model for each client. This architecture provides effective parameter sharing across clients, while maintaining the capacity to generate unique and diverse personal models. Furthermore, since hypernetwork parameters are never transmitted, this approach decouples the communication cost from the trainable model size. We test pFedHN empirically in several personalized federated learning challenges and find that it outperforms previous methods. Finally, since hypernetworks share information across clients we show that pFedHN can generalize better to new clients whose distributions differ from any client observed during training.

Results

TaskDatasetMetricValueModel
Federated LearningCIFAR-10ACC@1-100Clients88.09pFedHN-PC
Federated LearningCIFAR-10ACC@1-10Clients92.47pFedHN-PC
Federated LearningCIFAR-10ACC@1-500Clients83.2pFedHN-PC
Federated LearningCIFAR-10ACC@1-50Clients90.08pFedHN-PC
Federated LearningCIFAR-10ACC@1-100Clients87.97pFedHN
Federated LearningCIFAR-10ACC@1-10Clients90.83pFedHN
Federated LearningCIFAR-10ACC@1-50Clients88.38pFedHN
Federated LearningOmniglotACC@1-50Clients81.89pFedHN-PC
Federated LearningOmniglotACC@1-50Clients72.03pFedHN
Federated LearningCIFAR-100ACC@1-100Clients52.4pFedHN-PC
Federated LearningCIFAR-100ACC@1-10Clients68.15pFedHN-PC
Federated LearningCIFAR-100ACC@1-50034.1pFedHN-PC
Federated LearningCIFAR-100ACC@1-50Clients60.17pFedHN-PC
Federated LearningCIFAR-100ACC@1-100Clients53.24pFedHN
Federated LearningCIFAR-100ACC@1-10Clients65.74pFedHN
Federated LearningCIFAR-100ACC@1-50Clients59.46pFedHN

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