LGAIMay 7, 2024

FedStale: leveraging stale client updates in federated learning

arXiv:2405.04171v110 citationsh-index: 3
Originality Incremental advance
AI Analysis

This work addresses performance degradation in federated learning for applications with uneven client participation, though it is incremental as it builds on existing variance reduction methods.

The paper tackles the problem of heterogeneous client participation in federated learning, showing that aggregating stale updates can harm training when participation varies widely, and introduces FedStale, which outperforms FedAvg and FedVARP in experiments with diverse heterogeneity levels.

Federated learning algorithms, such as FedAvg, are negatively affected by data heterogeneity and partial client participation. To mitigate the latter problem, global variance reduction methods, like FedVARP, leverage stale model updates for non-participating clients. These methods are effective under homogeneous client participation. Yet, this paper shows that, when some clients participate much less than others, aggregating updates with different levels of staleness can detrimentally affect the training process. Motivated by this observation, we introduce FedStale, a novel algorithm that updates the global model in each round through a convex combination of "fresh" updates from participating clients and "stale" updates from non-participating ones. By adjusting the weight in the convex combination, FedStale interpolates between FedAvg, which only uses fresh updates, and FedVARP, which treats fresh and stale updates equally. Our analysis of FedStale convergence yields the following novel findings: i) it integrates and extends previous FedAvg and FedVARP analyses to heterogeneous client participation; ii) it underscores how the least participating client influences convergence error; iii) it provides practical guidelines to best exploit stale updates, showing that their usefulness diminishes as data heterogeneity decreases and participation heterogeneity increases. Extensive experiments featuring diverse levels of client data and participation heterogeneity not only confirm these findings but also show that FedStale outperforms both FedAvg and FedVARP in many settings.

Code Implementations1 repo
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