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A Fast Row-Stochastic Decentralized Method for Distributed Optimization Over Directed Graphs

Diyako Ghaderyan, Necdet Serhat Aybat, A. Pedro Aguiar, Фернандо Лобо Перейра

2023IEEE Transactions on Automatic Control25 citationsDOI

Abstract

In this article, we introduce a fast row-stochastic decentralized algorithm, referred to as FRSD, to solve consensus optimization problems over directed communication graphs. The proposed algorithm only utilizes row-stochastic weights, leading to certain practical advantages in broadcast communication settings over those requiring column-stochastic weights. Under the assumption that each node-specific function is smooth and strongly convex, we show that the FRSD iterate sequence converges with a linear rate to the optimal consensus solution. In contrast to the existing methods for directed networks, FRSD enjoys linear convergence without employing a gradient tracking (GT) technique explicitly, rather it implements GT implicitly with the use of a novel momentum term, which leads to a significant reduction in communication and storage overhead for each node when FRSD is implemented for solving high-dimensional problems over small-to-medium scale networks. In the numerical tests, we compare FRSD with other state-of-the-art methods, which use row-stochastic and/or column-stochastic weights.

Topics & Concepts

Computer scienceMathematical optimizationDistributed computingMathematicsDistributed Control Multi-Agent SystemsAdvanced Memory and Neural ComputingStochastic Gradient Optimization Techniques