2021
DOI: 10.48550/arxiv.2112.03504
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Improving Dynamic Regret in Distributed Online Mirror Descent Using Primal and Dual Information

Abstract: We consider the problem of distributed online optimization, with a group of learners connected via a dynamic communication graph. The goal of the learners is to track the global minimizer of a sum of time-varying loss functions in a distributed manner. We propose a novel algorithm, termed Distributed Online Mirror Descent with Multiple Averaging Decision and Gradient Consensus (DOMD-MADGC), which is based on mirror descent but incorporates multiple consensus averaging iterations over local gradients as well as… Show more

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