Revisiting 1-Peer Exponential Graph for Enhancing Decentralized Learning Efficiency
Abstract
For communication-efficient decentralized learning, it is essential to employ dynamic graphs designed to improve the expected spectral gap by reducing deviations from global averaging. The $1$-peer exponential graph demonstrates its finite-time convergence property--achieved by maximizing the expected spectral gap--but only when the number of nodes $n$ is a power of two. However, its efficiency across any $n$ and the commutativity of mixing matrices remain unexplored. We delve into the principles underlying the $1$-peer exponential graph to explain its efficiency across any $n$ and leverage them to develop new dynamic graphs. We propose two new dynamic graphs: the $k$-peer exponential graph and the null-cascade graph. Notably, the null-cascade graph achieves finite-time convergence for any $n$ while ensuring commutativity. Our experiments confirm the effectiveness of these new graphs, particularly the null-cascade graph, in most test settings.
Cite
Text
Niwa et al. "Revisiting 1-Peer Exponential Graph for Enhancing Decentralized Learning Efficiency." Advances in Neural Information Processing Systems, 2025.Markdown
[Niwa et al. "Revisiting 1-Peer Exponential Graph for Enhancing Decentralized Learning Efficiency." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/niwa2025neurips-revisiting/)BibTeX
@inproceedings{niwa2025neurips-revisiting,
title = {{Revisiting 1-Peer Exponential Graph for Enhancing Decentralized Learning Efficiency}},
author = {Niwa, Kenta and Takezawa, Yuki and Zhang, Guoqiang and Kleijn, W. Bastiaan},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/niwa2025neurips-revisiting/}
}