HeteRo-Select: Informativeness as the Participation Driver in Heterogeneous Federated Learning

Abstract

Federated learning systems typically allocate gradient compression by link speed. This is sensible when bandwidth and data informativeness align. However, under non-IID data, these signals often decorrelate or invert. A bandwidth-driven allocator then risks compressing the most informative gradients hardest. We propose HeteRo-Select, a framework that replaces bandwidth with a per-client informativeness score as the primary driver of compression. The score jointly governs three decisions per round: client selection, compression ratio, and server aggregation weight, with bandwidth retained only as a hard ceiling. Score-proportional selection provably reduces the effective heterogeneity of the chosen subset; score-proportional compression provably lowers aggregate top-k error at fixed traffic. Under the exact FedCG simulation protocol, HeteRo-Select delivers a 1.78× speedup and an 18.2\% reduction in traffic on CIFAR-10. The same configuration, unchanged, scales from a 7,850-parameter logistic regression to an 11.27M-parameter ResNet-18, hitting the accuracy target on three of four benchmarks. When bandwidth and informativeness are deliberately anti-correlated, the method still achieves the target accuracy with less traffic than the normal-bandwidth run.

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