A multiscale cavity method for sublinear-rank symmetric matrix factorization
Jean Barbier
The Abdus Salam International Centre for Theoretical Physics, Trieste, ItalyJustin Ko
École Normale Supérieure de Lyon, France; University of Waterloo, CanadaAnas A. Rahman
The Abdus Salam International Centre for Theoretical Physics, Trieste, Italy

Abstract
We consider a statistical model for symmetric matrix factorization with additive Gaussian noise in the high-dimensional regime, where the rank of the signal matrix to infer scales with its size as . Allowing for an -dependent rank offers new challenges and requires new methods. Working in the Bayes-optimal setting, we show that whenever the signal has i.i.d. entries, the limiting mutual information between signal and data is given by a variational formula involving a rank-one replica symmetric potential. In other words, from the information-theoretic perspective, the case of a (slowly) growing rank is the same as when (namely, the standard spiked Wigner model). The proof is primarily based on a novel multiscale cavity method allowing for growing rank along with some information-theoretic identities on worst noise for the vector Gaussian channel. We believe that the cavity method developed here will play a role in the analysis of a broader class of inference and spin models where the degrees of freedom are large arrays instead of vectors.
Cite this article
Jean Barbier, Justin Ko, Anas A. Rahman, A multiscale cavity method for sublinear-rank symmetric matrix factorization. Math. Stat. Learn. (2026), published online first
DOI 10.4171/MSL/57