English

Decentralized Personalized Federated Learning: Lower Bounds and Optimal Algorithm for All Personalization Modes

Optimization and Control 2022-09-20 v3

Abstract

This paper considers the problem of decentralized, personalized federated learning. For centralized personalized federated learning, a penalty that measures the deviation from the local model and its average, is often added to the objective function. However, in a decentralized setting this penalty is expensive in terms of communication costs, so here, a different penalty - one that is built to respect the structure of the underlying computational network - is used instead. We present lower bounds on the communication and local computation costs for this problem formulation and we also present provably optimal methods for decentralized personalized federated learning. Numerical experiments are presented to demonstrate the practical performance of our methods.

Keywords

Cite

@article{arxiv.2107.07190,
  title  = {Decentralized Personalized Federated Learning: Lower Bounds and Optimal Algorithm for All Personalization Modes},
  author = {Abdurakhmon Sadiev and Ekaterina Borodich and Aleksandr Beznosikov and Darina Dvinskikh and Saveliy Chezhegov and Rachael Tappenden and Martin Takáč and Alexander Gasnikov},
  journal= {arXiv preprint arXiv:2107.07190},
  year   = {2022}
}

Comments

New in v3: more detailed proofs, more experiments. 40 pages, 6 algorithms, 10 figures, 2 tables, 5 theorems

R2 v1 2026-06-24T04:13:15.875Z