Provable Reduction in Communication Rounds for Non-Smooth Convex Federated Learning
Abstract
Multiple local steps are key to communication-efficient federated learning. However, theoretical guarantees for such algorithms, without data heterogeneity-bounding assumptions, have been lacking in general non-smooth convex problems. Leveraging projection-efficient optimization methods, we propose FedMLS, a federated learning algorithm with provable improvements from multiple local steps. FedMLS attains an ε-suboptimal solution in O(1/ε) communication rounds, requiring a total of O(1/ε2) stochastic subgradient oracle calls.
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