Article ID: | iaor20133818 |
Volume: | 77 |
Issue: | 3 |
Start Page Number: | 305 |
End Page Number: | 321 |
Publication Date: | Jun 2013 |
Journal: | Mathematical Methods of Operations Research |
Authors: | Richter Stefan, Jones Colin, Morari Manfred |
Keywords: | programming: convex |
This paper examines the computational complexity certification of the fast gradient method for the solution of the dual of a parametric convex program. To this end, a lower iteration bound is derived such that for all parameters from a compact set a solution with a specified level of suboptimality will be obtained. For its practical importance, the derivation of the smallest lower iteration bound is considered. In order to determine it, we investigate both the computation of the worst case minimal Euclidean distance between an initial iterate and a Lagrange multiplier and the issue of finding the largest step size for the fast gradient method. In addition, we argue that optimal preconditioning of the dual problem cannot be proven to decrease the smallest lower iteration bound. The findings of this paper are of importance in embedded optimization, for instance, in model predictive control.