Improved Analysis of Randomized SVD for Top-Eigenvector Approximation
Abstract
Computing the top eigenvectors of a matrix is a problem of fundamental interest to various fields. While the majority of the literature has focused on analyzing the reconstruction error of low-rank matrices associated with the retrieved eigenvectors, in many applications one is interested in finding one vector with high Rayleigh quotient. In this paper we study the problem of approximating the top-eigenvector. Given a symmetric matrix $\mathbf{A}$ with largest eigenvalue $\lambda_1$, our goal is to find a vector $\hat{\mathbf{u}}$ that approximates the leading eigenvector $\mathbf{u}_1$ with high accuracy, as measured by the ratio $R(\hat{\mathbf{u}})=\lambda_1^{-1}{\hat{\mathbf{u}}^T\mathbf{A}\hat{\mathbf{u}}}/{\hat{\mathbf{u}}^T\hat{\mathbf{u}}}$. We present a novel analysis of the randomized SVD algorithm of \citet{halko2011finding} and derive tight bounds in many cases of interest. Notably, this is the first work that provides non-trivial bounds of $R(\hat{\mathbf{u}})$ for randomized SVD with any number of iterations. Our theoretical analysis is complemented with a thorough experimental study that confirms the efficiency and accuracy of the method.
Cite
Text
Tzeng et al. "Improved Analysis of Randomized SVD for Top-Eigenvector Approximation." Artificial Intelligence and Statistics, 2022.Markdown
[Tzeng et al. "Improved Analysis of Randomized SVD for Top-Eigenvector Approximation." Artificial Intelligence and Statistics, 2022.](https://mlanthology.org/aistats/2022/tzeng2022aistats-improved/)BibTeX
@inproceedings{tzeng2022aistats-improved,
title = {{Improved Analysis of Randomized SVD for Top-Eigenvector Approximation}},
author = {Tzeng, Ruo-Chun and Wang, Po-An and Adriaens, Florian and Gionis, Aristides and Lu, Chi-Jen},
booktitle = {Artificial Intelligence and Statistics},
year = {2022},
pages = {2045-2072},
volume = {151},
url = {https://mlanthology.org/aistats/2022/tzeng2022aistats-improved/}
}