# Joint CLT for top eigenvalues of sample covariance matrices of separable   high dimensional long memory processes

**Authors:** Peng Tian

arXiv: 1906.00909 · 2022-09-22

## TL;DR

This paper derives the joint central limit theorem for the top eigenvalues of sample covariance matrices from high-dimensional long memory processes with separable dependence, extending previous single-eigenvalue results.

## Contribution

It extends prior work by establishing the joint CLT for multiple top eigenvalues in high-dimensional long memory settings with Toeplitz dependence structures.

## Key findings

- Joint CLT for top eigenvalues of sample covariance matrices.
- Spectral gap properties for largest eigenvalues.
- Delocalization of eigenvectors associated with top eigenvalues.

## Abstract

For $N,n\in\mathbb N$, consider the sample covariance matrix $$S_N(T)=\frac{1}{N}XX^*$$ from a data set $X=C_N^{1/2}ZT_n^{1/2}$, where $Z=(Z_{i,j})$ is a $N\times n$ matrix having i.i.d. entries with mean zero and variance one, and $C_N, T_n$ are deterministic positive semi-definite Hermitian matrices of dimension $N$ and $n$, respectively. We assume that $(C_N)_N$ is bounded in spectral norm, and $T_n$ is a Toeplitz matrix with its largest eigenvalues diverging to infinity. The matrix $X$ can be viewed as a data set of an $N$-dimensional long memory stationary process having separable dependence structure.   As $N,n\to \infty$ and $Nn^{-1} \to r\in (0,\infty)$, we establish the asymptotics and the joint CLT for $(\lambda_1(S_N(T)),\cdots, \lambda_m(S_N(T))^\top$ where $\lambda_j(S_N(T))$ denotes the $j$th largest eigenvalue of $S_N(T)$, and $m$ is a fixed integer. For the CLT, we first study the case where the entries of $Z$ are Gaussian, and then we generalize the result to some more generic cases. This result substantially extends our previous result in Merlev\`ede et al. 2019, where we studied $\lambda_1(S_N(T))$ in the case where $m=1$ and $X=ZT_n^{1/2}$ with $Z$ having Gaussian entries.   In order to establish this CLT, we are led to study the first order asymptotics of the largest eigenvalues and the associated eigenvectors of some deterministic Toeplitz matrices. We are specially interested in the autocovariance matrices of long memory stationary processes. We prove multiple spectral gap properties for the largest eigenvalues and a delocalization property for their associated eigenvectors.

## Full text

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## References

43 references — full list in the complete paper: https://tomesphere.com/paper/1906.00909/full.md

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Source: https://tomesphere.com/paper/1906.00909