FedAR: Addressing Client Unavailability in Federated Learning with Local Update Approximation and Rectification
July 26, 2024 ยท Declared Dead ยท ๐ ECML/PKDD
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Authors
Chutian Jiang, Hansong Zhou, Xiaonan Zhang, Shayok Chakraborty
arXiv ID
2407.19103
Category
cs.LG: Machine Learning
Cross-listed
cs.DC
Citations
1
Venue
ECML/PKDD
Last Checked
4 months ago
Abstract
Federated learning (FL) enables clients to collaboratively train machine learning models under the coordination of a server in a privacy-preserving manner. One of the main challenges in FL is that the server may not receive local updates from each client in each round due to client resource limitations and intermittent network connectivity. The existence of unavailable clients severely deteriorates the overall FL performance. In this paper, we propose , a novel client update Approximation and Rectification algorithm for FL to address the client unavailability issue. FedAR can get all clients involved in the global model update to achieve a high-quality global model on the server, which also furnishes accurate predictions for each client. To this end, the server uses the latest update from each client as a surrogate for its current update. It then assigns a different weight to each client's surrogate update to derive the global model, in order to guarantee contributions from both available and unavailable clients. Our theoretical analysis proves that FedAR achieves optimal convergence rates on non-IID datasets for both convex and non-convex smooth loss functions. Extensive empirical studies show that FedAR comprehensively outperforms state-of-the-art FL baselines including FedAvg, MIFA, FedVARP and Scaffold in terms of the training loss, test accuracy, and bias mitigation. Moreover, FedAR also depicts impressive performance in the presence of a large number of clients with severe client unavailability.
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