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arxiv: 2003.12880 · v1 · pith:3PMPXYAUnew · submitted 2020-03-28 · 💻 cs.LG · stat.ML

Federated Residual Learning

classification 💻 cs.LG stat.ML
keywords federatedlearningclientsdataframeworkmodelperformanceshared
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We study a new form of federated learning where the clients train personalized local models and make predictions jointly with the server-side shared model. Using this new federated learning framework, the complexity of the central shared model can be minimized while still gaining all the performance benefits that joint training provides. Our framework is robust to data heterogeneity, addressing the slow convergence problem traditional federated learning methods face when the data is non-i.i.d. across clients. We test the theory empirically and find substantial performance gains over baselines.

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