Matrix Inference in Growing Rank Regimes

06/02/2023
by   Farzad Pourkamali, et al.
0

The inference of a large symmetric signal-matrix 𝐒∈ℝ^N× N corrupted by additive Gaussian noise, is considered for two regimes of growth of the rank M as a function of N. For sub-linear ranks M=Θ(N^α) with α∈(0,1) the mutual information and minimum mean-square error (MMSE) are derived for two classes of signal-matrices: (a) 𝐒=𝐗𝐗^⊺ with entries of 𝐗∈ℝ^N× M independent identically distributed; (b) 𝐒 sampled from a rotationally invariant distribution. Surprisingly, the formulas match the rank-one case. Two efficient algorithms are explored and conjectured to saturate the MMSE when no statistical-to-computational gap is present: (1) Decimation Approximate Message Passing; (2) a spectral algorithm based on a Rotation Invariant Estimator. For linear ranks M=Θ(N) the mutual information is rigorously derived for signal-matrices from a rotationally invariant distribution. Close connections with scalar inference in free probability are uncovered, which allow to deduce a simple formula for the MMSE as an integral involving the limiting spectral measure of the data matrix only. An interesting issue is whether the known information theoretic phase transitions for rank-one, and hence also sub-linear-rank, still persist in linear-rank. Our analysis suggests that only a smoothed-out trace of the transitions persists. Furthermore, the change of behavior between low and truly high-rank regimes only happens at the linear scale α=1.

READ FULL TEXT
research
06/14/2020

All-or-nothing statistical and computational phase transitions in sparse spiked matrix estimation

We determine statistical and computational limits for estimation of a ra...
research
11/12/2019

0-1 phase transitions in sparse spiked matrix estimation

We consider statistical models of estimation of a rank-one matrix (the s...
research
01/27/2021

The fundamental limits of sparse linear regression with sublinear sparsity

We establish exact asymptotic expressions for the normalized mutual info...
research
10/12/2017

Additivity of Information in Multilayer Networks via Additive Gaussian Noise Transforms

Multilayer (or deep) networks are powerful probabilistic models based on...
research
10/03/2022

Bayes-optimal limits in structured PCA, and how to reach them

We study the paradigmatic spiked matrix model of principal components an...
research
09/14/2021

Statistical limits of dictionary learning: random matrix theory and the spectral replica method

We consider increasingly complex models of matrix denoising and dictiona...
research
04/15/2020

High-dimensional rank-one nonsymmetric matrix decomposition: the spherical case

We consider the problem of estimating a rank-one nonsymmetric matrix und...

Please sign up or login with your details

Forgot password? Click here to reset