Edge universality of correlation matrices
Natesh S. Pillai, Jun Yin

TL;DR
This paper proves that the extreme eigenvalues of correlation matrices derived from standardized data matrices follow the Tracy-Widom distribution, demonstrating edge universality even with dependent entries.
Contribution
It establishes the edge universality of correlation matrices with dependent entries, extending Tracy-Widom law applicability to a broader class of random matrices.
Findings
Extreme eigenvalues follow Tracy-Widom distribution
Largest and smallest eigenvalues converge to Tracy-Widom law
Method can be extended to other dependent-entry matrices
Abstract
Let be a rectangular data matrix with independent real-valued entries satisfying and , . These entries have a subexponential decay at the tails. We will be working in the regime . In this paper we prove the edge universality of correlation matrices , where the rectangular matrix (called the standardized matrix) is obtained by normalizing each column of the data matrix by its Euclidean norm. Our main result states that asymptotically the -point () correlation functions of the extreme eigenvalues (at both edges of the spectrum) of the correlation matrix converge to those of the Gaussian correlation matrix, that is, Tracy-Widom law, and,…
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