An Accelerated Second-Order Method for Distributed Stochastic Optimization
Optimization and Control
2021-03-29 v1
Abstract
We consider distributed stochastic optimization problems that are solved with master/workers computation architecture. Statistical arguments allow to exploit statistical similarity and approximate this problem by a finite-sum problem, for which we propose an inexact accelerated cubic-regularized Newton's method that achieves lower communication complexity bound for this setting and improves upon existing upper bound. We further exploit this algorithm to obtain convergence rate bounds for the original stochastic optimization problem and compare our bounds with the existing bounds in several regimes when the goal is to minimize the number of communication rounds and increase the parallelization by increasing the number of workers.
Cite
@article{arxiv.2103.14392,
title = {An Accelerated Second-Order Method for Distributed Stochastic Optimization},
author = {Artem Agafonov and Pavel Dvurechensky and Gesualdo Scutari and Alexander Gasnikov and Dmitry Kamzolov and Aleksandr Lukashevich and Amir Daneshmand},
journal= {arXiv preprint arXiv:2103.14392},
year = {2021}
}