English

ADD-OPT: Accelerated Distributed Directed Optimization

Optimization and Control 2018-06-08 v3

Abstract

In this paper, we consider distributed optimization problems where the goal is to minimize a sum of objective functions over a multi-agent network. We focus on the case when the inter-agent communication is described by a strongly-connected, \emph{directed} graph. The proposed algorithm, ADD-OPT (Accelerated Distributed Directed Optimization), achieves the best known convergence rate for this class of problems,~O(μk),0<μ<1O(\mu^{k}),0<\mu<1, given strongly-convex, objective functions with globally Lipschitz-continuous gradients, where~kk is the number of iterations. Moreover, ADD-OPT supports a wider and more realistic range of step-sizes in contrast to existing work. In particular, we show that ADD-OPT converges for arbitrarily small (positive) step-sizes. Simulations further illustrate our results.

Keywords

Cite

@article{arxiv.1607.04757,
  title  = {ADD-OPT: Accelerated Distributed Directed Optimization},
  author = {Chenguang Xi and Ran Xin and Usman A. Khan},
  journal= {arXiv preprint arXiv:1607.04757},
  year   = {2018}
}