Feb. 14, 2024, 5:43 a.m. | Jike Zhong Hong-You Chen Wei-Lun Chao

cs.LG updates on arXiv.org arxiv.org

Batch Normalization (BN) is widely used in {centralized} deep learning to improve convergence and generalization. However, in {federated} learning (FL) with decentralized data, prior work has observed that training with BN could hinder performance and suggested replacing it with Group Normalization (GN). In this paper, we revisit this substitution by expanding the empirical study conducted in prior work. Surprisingly, we find that BN outperforms GN in many FL settings. The exceptions are high-frequency communication and extreme non-IID regimes. We reinvestigate …

convergence cs.ai cs.lg data decentralized decentralized data deep learning hinder making normalization paper performance prior training work

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