Fluctuations for differences of linear eigenvalue statistics for sample covariance matrices

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Journal Article | Published | English

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Abstract
We prove a central limit theorem for the difference of linear eigenvalue statistics of a sample covariance matrix W˜ and its minor W. We find that the fluctuation of this difference is much smaller than those of the individual linear statistics, as a consequence of the strong correlation between the eigenvalues of W˜ and W. Our result identifies the fluctuation of the spatial derivative of the approximate Gaussian field in the recent paper by Dumitru and Paquette. Unlike in a similar result for Wigner matrices, for sample covariance matrices, the fluctuation may entirely vanish.
Publishing Year
Date Published
2020-07-01
Journal Title
Random Matrices: Theory and Application
Publisher
World Scientific Publishing
Volume
9
Issue
3
Article Number
2050006
ISSN
eISSN
IST-REx-ID
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arXiv 1806.08751

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