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Accelerated Methods with Complexity Separation Under Data Similarity for Federated Learning Problems

Dmitry Bylinkin
Sergey Skorik
Dmitriy Bystrov
Leonid Berezin
Aram Avetisyan
Aleksandr Beznosikov
Main:10 Pages
3 Figures
Bibliography:3 Pages
Appendix:17 Pages
Abstract

Heterogeneity within data distribution poses a challenge in many modern federated learning tasks. We formalize it as an optimization problem involving a computationally heavy composite under data similarity. By employing different sets of assumptions, we present several approaches to develop communication-efficient methods. An optimal algorithm is proposed for the convex case. The constructed theory is validated through a series of experiments across various problems.

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