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Reducing communication overhead through one-shot model pruning in federated learning

  • 05-05-2025
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Abstract

The article addresses the critical issue of communication overhead in federated learning, a decentralized approach to machine learning that preserves data privacy. It highlights the challenges posed by non-IID data distributions and the need for efficient communication strategies to enhance operational efficiency. The authors present FedSNIP, an extension of their previous work, which employs one-shot model pruning based on connection sensitivity to reduce communication overhead. The article evaluates FedSNIP's performance using datasets such as CIFAR-10 and UCI-HAR, and compares it with existing methods like FedAvg, FedDLR, and CMFL. It also explores the use of sparse matrix compression formats, including CSR, COO, and CSC, to further optimize data transfer. The findings demonstrate FedSNIP's effectiveness in maintaining model accuracy while significantly reducing the amount of data transmitted, making it a promising solution for practical federated learning deployments. The article concludes with a discussion on future research directions, including adaptive pruning strategies and client selection based on sparsity levels, to further enhance the efficiency and robustness of federated learning systems.

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Title
Reducing communication overhead through one-shot model pruning in federated learning
Authors
Rómulo Bustincio
Allan M. de Souza
Joahannes B. D. da Costa
Luis F. G. Gonzalez
Luiz F. Bittencourt
Publication date
05-05-2025
Publisher
Springer International Publishing
Published in
Annals of Telecommunications / Issue 9-10/2025
Print ISSN: 0003-4347
Electronic ISSN: 1958-9395
DOI
https://doi.org/10.1007/s12243-025-01097-x
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