Optimization over time-varying directed graphs with row and column-stochastic matrices
Abstract
In this paper, we provide a distributed optimization algorithm, termed as TV-, that minimizes a sum of convex functions over time-varying, random directed graphs. Contrary to the existing work, the algorithm we propose does not require eigenvector estimation to estimate the (non-) Perron eigenvector of a stochastic matrix. Instead, the proposed approach relies on a novel information mixing approach that exploits both row- and column-stochastic weights to achieve agreement towards the optimal solution when the underlying graph is directed. We show that TV- converges linearly to the optimal solution when the global objective is smooth and strongly-convex, and the underlying time-varying graphs exhibit bounded connectivity, i.e., a union of every consecutive graphs is strongly-connected. We derive the convergence results based on the stability analysis of a linear system of inequalities along with a matrix perturbation argument. Simulations confirm the findings in this paper.
Cite
@article{arxiv.1810.07393,
title = {Optimization over time-varying directed graphs with row and column-stochastic matrices},
author = {Fakhteh Saadatniaki and Ran Xin and Usman A. Khan},
journal= {arXiv preprint arXiv:1810.07393},
year = {2018}
}