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Most Influential AISTATS 2021 Paper · 2026-03 edition

Federated Learning with Compression: Unified Analysis and Sharp Guarantees

Farzin Haddadpour; Mohammad Mahdi Kamani; Aryan Mokhtari; Mehrdad Mahdavi

Venue
Conference on Artificial Intelligence and Statistics (AISTATS) 2021
Recognition
Most Influential AISTATS 2021 Paper (Rank No. 1)
Edition
2026-03
Impact factor
6
Certificate ID
9bd06af6b233d339

Abstract

In federated learning, communication cost is often a critical bottleneck to scale up distributed optimization algorithms to collaboratively learn a model from millions of devices with potentially unreliable or limited communication and heterogeneous data distributions. Two notable trends to deal with the communication overhead of federated algorithms are gradient compression and local computation with periodic communication. Despite many attempts, characterizing the relationship between these two approaches has proven elusive. We address this by proposing a set of algorithms with periodical compressed (quantized or sparsified) communication and analyze their convergence properties in both homogeneous and heterogeneous local data distributions settings. For the homogeneous setting, our analysis improves existing bounds by providing tighter convergence rates for both strongly convex and non-convex objective functions. To mitigate data heterogeneity, we introduce a local gradient tracking scheme and obtain sharp convergence rates that match the best-known communication complexities without compression for convex, strongly convex, and nonconvex settings. We complement our theoretical results by demonstrating the effectiveness of our proposed methods on real-world datasets.

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