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Stochastic Gradient Methods with Compressed Communication for Decentralized Saddle Point Problems

28 May 2022
Chhavi Sharma
Vishnu Narayanan
P. Balamurugan
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Abstract

We develop two compression based stochastic gradient algorithms to solve a class of non-smooth strongly convex-strongly concave saddle-point problems in a decentralized setting (without a central server). Our first algorithm is a Restart-based Decentralized Proximal Stochastic Gradient method with Compression (C-RDPSG) for general stochastic settings. We provide rigorous theoretical guarantees of C-RDPSG with gradient computation complexity and communication complexity of order O((1+δ)41L2κf2κg21ϵ)\mathcal{O}( (1+\delta)^4 \frac{1}{L^2}{\kappa_f^2}\kappa_g^2 \frac{1}{\epsilon} )O((1+δ)4L21​κf2​κg2​ϵ1​), to achieve an ϵ\epsilonϵ-accurate saddle-point solution, where δ\deltaδ denotes the compression factor, κf\kappa_fκf​ and κg\kappa_gκg​ denote respectively the condition numbers of objective function and communication graph, and LLL denotes the smoothness parameter of the smooth part of the objective function. Next, we present a Decentralized Proximal Stochastic Variance Reduced Gradient algorithm with Compression (C-DPSVRG) for finite sum setting which exhibits gradient computation complexity and communication complexity of order O((1+δ)max⁡{κf2,δκf2κg,κg}log⁡(1ϵ))\mathcal{O} \left((1+\delta) \max \{\kappa_f^2, \sqrt{\delta}\kappa^2_f\kappa_g,\kappa_g \} \log\left(\frac{1}{\epsilon}\right) \right)O((1+δ)max{κf2​,δ​κf2​κg​,κg​}log(ϵ1​)). Extensive numerical experiments show competitive performance of the proposed algorithms and provide support to the theoretical results obtained.

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