English

Distributed Randomized Gradient-Free Mirror Descent Algorithm for Constrained Optimization

Optimization and Control 2019-03-12 v1

Abstract

This paper is concerned with multi-agent optimization problem. A distributed randomized gradient-free mirror descent (DRGFMD) method is developed by introducing a randomized gradient-free oracle in the mirror descent scheme where the non-Euclidean Bregman divergence is used. The classical gradient descent method is generalized without using subgradient information of objective functions. The proposed algorithm is the first distributed non-Euclidean zeroth-order method which achieves an O(1/T)O(1/\sqrt{T}) convergence rate, recovering the best known optimal rate of distributed compact constrained convex optimization. Also, the DRGFMD algorithm achieves an O(lnT/T)O(\ln T/T) convergence rate for the strongly convex constrained optimization case. The rate matches the best known non-compact constraint result. Moreover, a decentralized reciprocal weighted average approximating sequence is investigated and first used in distributed algorithm. A class of convergence rates are also achieved for the algorithm with weighted averaging (DRGFMD-WA). The technique on constructing the decentralized weighted average sequence provides new insight in searching for minimizers in distributed algorithms.

Keywords

Cite

@article{arxiv.1903.04157,
  title  = {Distributed Randomized Gradient-Free Mirror Descent Algorithm for Constrained Optimization},
  author = {Zhan Yu and Daniel W. C. Ho and Deming Yuan},
  journal= {arXiv preprint arXiv:1903.04157},
  year   = {2019}
}

Comments

14 pages, 6 figures, preprint submitted to IEEE TAC in November 2018