Feb. 12, 2024, 5:43 a.m. | Tom Overman Garrett Blum Diego Klabjan

cs.LG updates on arXiv.org arxiv.org

Very few methods for hybrid federated learning, where clients only hold subsets of both features and samples, exist. Yet, this scenario is extremely important in practical settings. We provide a fast, robust algorithm for hybrid federated learning that hinges on Fenchel Duality. We prove the convergence of the algorithm to the same solution as if the model is trained centrally in a variety of practical regimes. Furthermore, we provide experimental results that demonstrate the performance improvements of the algorithm over …

algorithm convergence cs.lg features federated learning hybrid practical primal prove robust samples solution the algorithm

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