Oral
in
Workshop: Federated Learning: Recent Advances and New Challenges
Group privacy for personalized federated learning
Filippo Galli · Sayan Biswas · Gangsoo Zeong · Tommaso Cucinotta · Catuscia Palamidessi
Abstract:
Federated learning exposes the participating clients to issues of leakage of private information from the client-server communication and the lack of personalization of the global model. To address both the problems, we investigate the use of metric-based local privacy mechanisms and model personalization. These are based on operations performed directly in the parameter space, i.e. sanitization of the model parameters by the clients and clustering of model parameters by the server.
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