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Personalized Federated Learning: A Unified Framework and Universal Optimization Techniques
by
Zhao, Boxin
, Hanzely, Filip
, Kolar, Mladen
in
Customization
/ Design optimization
/ Federated learning
/ Optimization techniques
2023
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Personalized Federated Learning: A Unified Framework and Universal Optimization Techniques
by
Zhao, Boxin
, Hanzely, Filip
, Kolar, Mladen
in
Customization
/ Design optimization
/ Federated learning
/ Optimization techniques
2023
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Personalized Federated Learning: A Unified Framework and Universal Optimization Techniques
Paper
Personalized Federated Learning: A Unified Framework and Universal Optimization Techniques
2023
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Overview
We investigate the optimization aspects of personalized Federated Learning (FL). We propose general optimizers that can be applied to numerous existing personalized FL objectives, specifically a tailored variant of Local SGD and variants of accelerated coordinate descent/accelerated SVRCD. By examining a general personalized objective capable of recovering many existing personalized FL objectives as special cases, we develop a comprehensive optimization theory applicable to a wide range of strongly convex personalized FL models in the literature. We showcase the practicality and/or optimality of our methods in terms of communication and local computation. Remarkably, our general optimization solvers and theory can recover the best-known communication and computation guarantees for addressing specific personalized FL objectives. Consequently, our proposed methods can serve as universal optimizers, rendering the design of task-specific optimizers unnecessary in many instances.
Publisher
Cornell University Library, arXiv.org
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