English

A Derivative-Free CoMirror Algorithm

Optimization and Control 2012-10-25 v1

Abstract

We consider min{f(x):g(x)0, xX},\min\{f(x):g(x) \le 0, ~x\in X\}, where XX is a compact convex subset of \RRm\RR^m, and ff and gg are continuous convex functions defined on an open neighbourhood of XX. We work in the setting of derivative-free optimization, assuming that ff and gg are available through a black-box that provides only function values for a lower-C2\mathcal{C}^2 representation of the functions. We present a derivative-free optimization variant of the \eps\eps-comirror algorithm \cite{BBTGBT2010}. Algorithmic convergence hinges on the ability to accurately approximate subgradients of lower-C2\mathcal{C}^2 functions, which we prove is possible through linear interpolation. We provide convergence analysis that quantifies the difference between the function values of the iterates and the optimal function value. We find that the DFO algorithm we develop has the same convergence result as the original gradient-based algorithm. We present some numerical testing that demonstrate the practical feasibility of the algorithm, and conclude with some directions for further research.

Keywords

Cite

@article{arxiv.1210.6403,
  title  = {A Derivative-Free CoMirror Algorithm},
  author = {Heinz H. Bauschke and Warren L. Hare and Walaa M. Moursi},
  journal= {arXiv preprint arXiv:1210.6403},
  year   = {2012}
}
R2 v1 2026-06-21T22:26:49.099Z