Differential error feedback for communication-efficient decentralized learning
Roula Nassif, Stefan Vlaski, Marco Carpentiero, Vincenzo Matta, Ali H., Sayed

TL;DR
This paper introduces a novel decentralized learning method combining differential quantization and error feedback, enabling efficient communication with finite bits while maintaining accuracy in constrained optimization tasks.
Contribution
It proposes a new approach that integrates differential quantization with error feedback for decentralized learning with subspace constraints, extending prior methods to more general settings.
Findings
The method is stable in mean-square error and bit rate under certain conditions.
Small step-sizes allow performance close to uncompressed scenarios.
The approach supports various task relatedness models beyond consensus.
Abstract
Communication-constrained algorithms for decentralized learning and optimization rely on local updates coupled with the exchange of compressed signals. In this context, differential quantization is an effective technique to mitigate the negative impact of compression by leveraging correlations between successive iterates. In addition, the use of error feedback, which consists of incorporating the compression error into subsequent steps, is a powerful mechanism to compensate for the bias caused by the compression. Under error feedback, performance guarantees in the literature have so far focused on algorithms employing a fusion center or a special class of contractive compressors that cannot be implemented with a finite number of bits. In this work, we propose a new decentralized communication-efficient learning approach that blends differential quantization with error feedback. The…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Distributed Control Multi-Agent Systems · Neural Networks and Applications
