Stochastic Matrix-Free Equilibration
Abstract
We present a novel method for approximately equilibrating a matrix using only multiplication by and . Our method is based on convex optimization and projected stochastic gradient descent, using an unbiased estimate of a gradient obtained by a randomized method. Our method provably converges in expectation with an convergence rate and empirically gets good results with a small number of iterations. We show how the method can be applied as a preconditioner for matrix-free iterative algorithms such as LSQR and Chambolle-Cremers-Pock, substantially reducing the iterations required to reach a given level of precision. We also derive a novel connection between equilibration and condition number, showing that equilibration minimizes an upper bound on the condition number over all choices of row and column scalings.
Cite
@article{arxiv.1602.06621,
title = {Stochastic Matrix-Free Equilibration},
author = {Steven Diamond and Stephen Boyd},
journal= {arXiv preprint arXiv:1602.06621},
year = {2016}
}