A simple analysis of a quantum-inspired algorithm for solving low-rank linear systems
Abstract
We describe and analyze a simple algorithm for sampling from the solution to a linear system . We assume access to a sampler which allows us to draw indices proportional to the squared row/column-norms of . Our algorithm produces a compressed representation of some vector for which in time, where and . The representation of allows us to query entries of in time and sample proportional to the square entries of in time, assuming access to a sampler which allows us to draw indices proportional to the squared entries of any given row of . Our analysis, which is elementary, non-asymptotic, and fully self-contained, simplifies and clarifies several past analyses from literature including [Gily\'en, Song, and Tang; 2022, 2023] and [Shao and Montanaro; 2022].
Cite
@article{arxiv.2508.13108,
title = {A simple analysis of a quantum-inspired algorithm for solving low-rank linear systems},
author = {Tyler Chen and Junhyung Lyle Kim and Archan Ray and Shouvanik Chakrabarti and Dylan Herman and Niraj Kumar},
journal= {arXiv preprint arXiv:2508.13108},
year = {2025}
}