Abstract
We establish a quantitative version of the Tracy–Widom law for the largest eigenvalue of high-dimensional sample covariance matrices. To be precise, we show that the fluctuations of the largest eigenvalue of a sample covariance matrix converge to its Tracy–Widom limit at a rate nearly , where X is an random matrix whose entries are independent real or complex random variables, assuming that both M and N tend to infinity at a constant rate. This result improves the previous estimate obtained by Wang (2019). Our proof relies on a Green function comparison method (Adv. Math. 229 (2012) 1435–1515) using iterative cumulant expansions, the local laws for the Green function and asymptotic properties of the correlation kernel of the white Wishart ensemble.
Funding Statement
K. Schnelli was supported by the Swedish Research Council Grants VR-2017-05195, and the Knut and Alice Wallenberg Foundation. Y. Xu was supported by the Swedish Research Council Grant VR-2017-05195 and the ERC Advanced Grant “RMTBeyond” No. 101020331.
Citation
Kevin Schnelli. Yuanyuan Xu. "Convergence rate to the Tracy–Widom laws for the largest eigenvalue of sample covariance matrices." Ann. Appl. Probab. 33 (1) 677 - 725, February 2023. https://doi.org/10.1214/22-AAP1826
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