Fundamental Limits of Matrix Sensing: Exact Asymptotics, Universality, and Applications
Abstract
In the matrix sensing problem, one wishes to reconstruct a matrix from (possibly noisy) observations of its linear projections along given directions. We consider this model in the high-dimensional limit: while previous works on this model primarily focused on the recovery of low-rank matrices, we consider in this work more general classes of structured signal matrices with potentially large rank, e.g. a product of two matrices of sizes proportional to the dimension. We provide rigorous asymptotic equations characterizing the Bayes-optimal learning performance from a number of samples which is proportional to the number of entries in the matrix. Our proof is composed of three key ingredients: $(i)$ we prove universality properties to handle structured sensing matrices, related to the “Gaussian equivalence” phenomenon in statistical learning, $(ii)$ we provide a sharp characterization of Bayes-optimal learning in generalized linear models with Gaussian data and structured matrix priors, generalizing previously studied settings, and $(iii)$ we leverage previous works on the problem of matrix denoising. The generality of our results allow for a variety of applications: notably, we mathematically establish predictions obtained via non-rigorous methods from statistical physics in Erba et al. (2024) regarding Bilinear Sequence Regression, a benchmark model for learning from sequences of tokens, and in Maillard et al. (2024) on Bayes-optimal learning in neural networks with quadratic activation function, and width proportional to the dimension.
Cite
Text
Xu et al. "Fundamental Limits of Matrix Sensing: Exact Asymptotics, Universality, and Applications." Proceedings of Thirty Eighth Conference on Learning Theory, 2025.Markdown
[Xu et al. "Fundamental Limits of Matrix Sensing: Exact Asymptotics, Universality, and Applications." Proceedings of Thirty Eighth Conference on Learning Theory, 2025.](https://mlanthology.org/colt/2025/xu2025colt-fundamental/)BibTeX
@inproceedings{xu2025colt-fundamental,
title = {{Fundamental Limits of Matrix Sensing: Exact Asymptotics, Universality, and Applications}},
author = {Xu, Yizhou and Maillard, Antoine and Zdeborová, Lenka and Krzakala, Florent},
booktitle = {Proceedings of Thirty Eighth Conference on Learning Theory},
year = {2025},
pages = {5757-5823},
volume = {291},
url = {https://mlanthology.org/colt/2025/xu2025colt-fundamental/}
}