Improved Iteration Complexities for Overconstrained $p$-Norm Regression
Abstract
In this paper we obtain improved iteration complexities for solving regression. We provide methods which given any full-rank with , , and solve to high precision in time dominated by that of solving linear systems in for positive diagonal matrices . This improves upon the previous best iteration complexity of (Adil, Kyng, Peng, Sachdeva 2019). As a corollary, we obtain an iteration complexity for approximate regression. Further, for and dual norm we provide an algorithm that solves regression in iterations. To obtain this result we analyze row reweightings (closely inspired by -norm Lewis weights) which allow a closer connection between and regression. We provide adaptations of two different iterative optimization frameworks which leverage this connection and yield our results. The first framework is based on iterative refinement and multiplicative weights based width reduction and the second framework is based on highly smooth acceleration. Both approaches yield iteration methods but the second has a polynomial dependence on (as opposed to the exponential dependence of the first algorithm) and provides a new alternative to the previous state-of-the-art methods for regression for large .
Cite
@article{arxiv.2111.01848,
title = {Improved Iteration Complexities for Overconstrained $p$-Norm Regression},
author = {Arun Jambulapati and Yang P. Liu and Aaron Sidford},
journal= {arXiv preprint arXiv:2111.01848},
year = {2021}
}
Comments
30 pages