Beyond Exponential Graph: Communication-Efficient Topologies for Decentralized Learning via Finite-time Convergence
May 19, 2023 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Yuki Takezawa, Ryoma Sato, Han Bao, Kenta Niwa, Makoto Yamada
arXiv ID
2305.11420
Category
cs.LG: Machine Learning
Cross-listed
cs.DC,
stat.ML
Citations
17
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
Decentralized learning has recently been attracting increasing attention for its applications in parallel computation and privacy preservation. Many recent studies stated that the underlying network topology with a faster consensus rate (a.k.a. spectral gap) leads to a better convergence rate and accuracy for decentralized learning. However, a topology with a fast consensus rate, e.g., the exponential graph, generally has a large maximum degree, which incurs significant communication costs. Thus, seeking topologies with both a fast consensus rate and small maximum degree is important. In this study, we propose a novel topology combining both a fast consensus rate and small maximum degree called the Base-$(k + 1)$ Graph. Unlike the existing topologies, the Base-$(k + 1)$ Graph enables all nodes to reach the exact consensus after a finite number of iterations for any number of nodes and maximum degree k. Thanks to this favorable property, the Base-$(k + 1)$ Graph endows Decentralized SGD (DSGD) with both a faster convergence rate and more communication efficiency than the exponential graph. We conducted experiments with various topologies, demonstrating that the Base-$(k + 1)$ Graph enables various decentralized learning methods to achieve higher accuracy with better communication efficiency than the existing topologies.
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