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Federated Learning over Connected Modes

About

Statistical heterogeneity in federated learning poses two major challenges: slow global training due to conflicting gradient signals, and the need of personalization for local distributions. In this work, we tackle both challenges by leveraging recent advances in \emph{linear mode connectivity} -- identifying a linearly connected low-loss region in the parameter space of neural networks, which we call solution simplex. We propose federated learning over connected modes (\textsc{Floco}), where clients are assigned local subregions in this simplex based on their gradient signals, and together learn the shared global solution simplex. This allows personalization of the client models to fit their local distributions within the degrees of freedom in the solution simplex and homogenizes the update signals for the global simplex training. Our experiments show that \textsc{Floco} accelerates the global training process, and significantly improves the local accuracy with minimal computational overhead in cross-silo federated learning settings.

Dennis Grinwald, Philipp Wiesner, Shinichi Nakajima• 2024

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-100 Dir-0.1
Accuracy27.98
65
Image ClassificationCIFAR-10 Dir(0.5)
Accuracy66.26
59
Image ClassificationEMNIST Dir(0.1) (test)
Test Accuracy88.74
41
Image ClassificationCIFAR-100 Dir-0.5
Accuracy18.25
37
Image ClassificationEMNIST Dir(0.5) (test)
Test Accuracy85.71
31
Image ClassificationMNIST (Dir(0.5))
Accuracy0.985
19
Image ClassificationFMNIST (Dir(0.5))
Accuracy91.38
13
Image ClassificationMNIST (Dir(0.1))
Accuracy (%)98.8
13
Image ClassificationSVHN Dir(0.1)
Accuracy93.37
13
Image ClassificationSVHN (Dir(0.5))
Accuracy89.76
13
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