Federated Learning with Superquantile Aggregation for Heterogeneous Data

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Publication:6385973

arXiv2112.09429MaRDI QIDQ6385973

Author name not available (Why is that?)

Publication date: 17 December 2021

Abstract: We present a federated learning framework that is designed to robustly deliver good predictive performance across individual clients with heterogeneous data. The proposed approach hinges upon a superquantile-based learning objective that captures the tail statistics of the error distribution over heterogeneous clients. We present a stochastic training algorithm that interleaves differentially private client filtering with federated averaging steps. We prove finite time convergence guarantees for the algorithm: O(1/sqrtT) in the nonconvex case in T communication rounds and O(exp(T/kappa3/2)+kappa/T) in the strongly convex case with local condition number kappa. Experimental results on benchmark datasets for federated learning demonstrate that our approach is competitive with classical ones in terms of average error and outperforms them in terms of tail statistics of the error.




Has companion code repository: https://github.com/krishnap25/simplicial-fl








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