Perturbation Bounds for Low-Rank Inverse Approximations Under Noise

Abstract

Low-rank pseudoinverses are widely used to approximate matrix inverses in scalable machine learning, optimization, and scientific computing. However, real-world matrices are often observed with noise, arising from sampling, sketching, and quantization. The spectral-norm robustness of low-rank inverse approximations remains poorly understood. We systematically study the spectral-norm error $\| \tilde{A}_p^{-1} - A_p^{-1} \|$ for an $n\times n$ symmetric matrix $A$, where $A_p^{-1}$ denotes the best rank-\(p\) approximation of $A^{-1}$, and $\tilde{A} = A + E$ is a noisy observation. Under mild assumptions on the noise, we derive sharp non-asymptotic perturbation bounds that reveal how the error scales with the eigengap, spectral decay, and noise alignment with low-curvature directions of $A$. Our analysis introduces a novel application of contour integral techniques to the \emph{non-entire} function $f(z) = 1/z$, yielding bounds that improve over naive adaptations of classical full-inverse bounds by up to a factor of $\sqrt{n}$. Empirically, our bounds closely track the true perturbation error across a variety of real-world and synthetic matrices, while estimates based on classical results tend to significantly overpredict. These findings offer practical, spectrum-aware guarantees for low-rank inverse approximations in noisy computational environments.

Cite

Text

Tran and Vishnoi. "Perturbation Bounds for Low-Rank Inverse Approximations Under Noise." Advances in Neural Information Processing Systems, 2025.

Markdown

[Tran and Vishnoi. "Perturbation Bounds for Low-Rank Inverse Approximations Under Noise." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/tran2025neurips-perturbation/)

BibTeX

@inproceedings{tran2025neurips-perturbation,
  title     = {{Perturbation Bounds for Low-Rank Inverse Approximations Under Noise}},
  author    = {Tran, Phuc and Vishnoi, Nisheeth K.},
  booktitle = {Advances in Neural Information Processing Systems},
  year      = {2025},
  url       = {https://mlanthology.org/neurips/2025/tran2025neurips-perturbation/}
}