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DRIVE: One-bit Distributed Mean Estimation

18 May 2021
S. Vargaftik
Ran Ben-Basat
Amit Portnoy
Gal Mendelson
Y. Ben-Itzhak
Michael Mitzenmacher
    OOD
    FedML
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Abstract

We consider the problem where nnn clients transmit ddd-dimensional real-valued vectors using d(1+o(1))d(1+o(1))d(1+o(1)) bits each, in a manner that allows the receiver to approximately reconstruct their mean. Such compression problems naturally arise in distributed and federated learning. We provide novel mathematical results and derive computationally efficient algorithms that are more accurate than previous compression techniques. We evaluate our methods on a collection of distributed and federated learning tasks, using a variety of datasets, and show a consistent improvement over the state of the art.

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