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Provably Personalized and Robust Federated Learning

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arxiv 2306.08393 v2 pith:EQPPSPZJ submitted 2023-06-14 cs.LG cs.DC

Provably Personalized and Robust Federated Learning

classification cs.LG cs.DC
keywords clientslearningalgorithmsclustersconvergencefederatedmodel-per-clusteroptimal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Identifying clients with similar objectives and learning a model-per-cluster is an intuitive and interpretable approach to personalization in federated learning. However, doing so with provable and optimal guarantees has remained an open challenge. We formalize this problem as a stochastic optimization problem, achieving optimal convergence rates for a large class of loss functions. We propose simple iterative algorithms which identify clusters of similar clients and train a personalized model-per-cluster, using local client gradients and flexible constraints on the clusters. The convergence rates of our algorithms asymptotically match those obtained if we knew the true underlying clustering of the clients and are provably robust in the Byzantine setting where some fraction of the clients are malicious.

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