Title :
A Subgradient Solution to Structured Robust Least Squares Problems
Author_Institution :
GoNet Syst., Tel Aviv, Israel
Abstract :
A standard and established method for solving a Least Squares problem in the presence of a structured uncertainty is to assemble and solve a semidefinite programming (SDP) equivalent problem. When the problem´s dimensions are high, the solution of the structured robust least squares (RLS) problem via SDP becomes an expensive task in a computational complexity sense. We propose a subgradient based solution that utilizes the MinMax structure of the problem. This algorithm is justified by Danskin´s MinMax Theorem and enjoys the well-known convergence properties of the subgradient method. The complexity of the new scheme is analyzed and its efficiency is verified by simulations of a robust equalization design.
Keywords :
computational complexity; least squares approximations; mathematical programming; minimax techniques; Danskin MinMax theorem; MinMax structure; computational complexity; robust equalization design; semidefinite programming equivalent problem; structured robust least square problem; structured robust least squares problems; structured uncertainty; subgradient based solution; subgradient method; subgradient solution; Equalization; MinMax; robust least squares; semidefinite programming; trust region;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2010.2050481