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QUIC-FL: Quick Unbiased Compression for Federated Learning

Published 26 May 2022 in cs.LG, cs.AI, cs.DS, and cs.NI | (2205.13341v4)

Abstract: Distributed Mean Estimation (DME), in which $n$ clients communicate vectors to a parameter server that estimates their average, is a fundamental building block in communication-efficient federated learning. In this paper, we improve on previous DME techniques that achieve the optimal $O(1/n)$ Normalized Mean Squared Error (NMSE) guarantee by asymptotically improving the complexity for either encoding or decoding (or both). To achieve this, we formalize the problem in a novel way that allows us to use off-the-shelf mathematical solvers to design the quantization.

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