Tracy-Widom distribution for the edge eigenvalues of Gram type random matrices

08/10/2020
by   Xiucai Ding, et al.
0

Large dimensional Gram type matrices are common objects in high-dimensional statistics and machine learning. In this paper, we study the limiting distribution of the edge eigenvalues for a general class of high-dimensional Gram type random matrices, including separable sample covariance matrices, sparse sample covariance matrices, bipartite stochastic block model and random Gram matrices with general variance profiles. Specifically, we prove that under (almost) sharp moment conditions and certain tractable regularity assumptions, the edge eigenvalues, i.e., the largest few eigenvalues of non-spiked Gram type random matrices or the extremal bulk eigenvalues of spiked Gram type random matrices, satisfy the Tracy-Widom distribution asymptotically. Our results can be used to construct adaptive, accurate and powerful statistics for high-dimensional statistical inference. In particular, we propose data-dependent statistics to infer the number of signals under general noise structure, test the one-sided sphericity of separable matrix, and test the structure of bipartite stochastic block model. Numerical simulations show strong support of our proposed statistics. The core of our proof is to establish the edge universality and Tracy-Widom distribution for a rectangular Dyson Brownian motion with regular initial data. This is a general strategy to study the edge statistics for high-dimensional Gram type random matrices without exploring the specific independence structure of the target matrices. It has potential to be applied to more general random matrices that are beyond the ones considered in this paper.

READ FULL TEXT
research
04/16/2023

Tracy-Widom distribution for the edge eigenvalues of elliptical model

In this paper, we study the largest eigenvalues of sample covariance mat...
research
12/12/2022

A CLT for the LSS of large dimensional sample covariance matrices with diverging spikes

In this paper, we establish the central limit theorem (CLT) for linear s...
research
02/19/2019

Asymptotic Theory of Eigenvectors for Large Random Matrices

Characterizing the exact asymptotic distributions of high-dimensional ei...
research
02/10/2021

On high-dimensional wavelet eigenanalysis

In this paper, we mathematically construct wavelet eigenanalysis in high...
research
08/27/2020

Statistical inference for principal components of spiked covariance matrices

In this paper, we study the asymptotic behavior of the extreme eigenvalu...
research
10/01/2013

Graph connection Laplacian and random matrices with random blocks

Graph connection Laplacian (GCL) is a modern data analysis technique tha...
research
09/01/2020

Edge statistics of large dimensional deformed rectangular matrices

We consider the edge statistics of large dimensional deformed rectangula...

Please sign up or login with your details

Forgot password? Click here to reset