Consistent Low-Rank Approximation
Abstract
We introduce and study the problem of consistent low-rank approximation, in which rows of an input matrix arrive sequentially and the goal is to provide a sequence of subspaces that well-approximate the optimal rank- approximation to the submatrix that has arrived at each time , while minimizing the recourse, i.e., the overall change in the sequence of solutions. We first show that when the goal is to achieve a low-rank cost within an additive factor of the optimal cost, roughly recourse is feasible. For the more challenging goal of achieving a relative -multiplicative approximation of the optimal rank- cost, we show that a simple upper bound in this setting is recourse, which we further improve to for integer-bounded matrices and for data streams with polynomial online condition number. We also show that recourse is necessary for any algorithm that maintains a multiplicative -approximation to the optimal low-rank cost, even if the full input is known in advance. Finally, we perform a number of empirical evaluations to complement our theoretical guarantees, demonstrating the efficacy of our algorithms in practice.
Cite
@article{arxiv.2603.02148,
title = {Consistent Low-Rank Approximation},
author = {David P. Woodruff and Samson Zhou},
journal= {arXiv preprint arXiv:2603.02148},
year = {2026}
}
Comments
ICLR 2026