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Limiting Spectral Distribution of Large Sample Covariance Matrices Associated with a Class of Stationary Processes

机译:一类平稳过程相关的大样本协方差矩阵的极限谱分布

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摘要

In this paper, we derive an extension of the MarcI dagger enko-Pastur theorem to a large class of weak dependent sequences of real-valued random variables having only moment of order 2. Under a mild dependence condition that is easily verifiable in many situations, we derive that the limiting spectral distribution of the associated sample covariance matrix is characterized by an explicit equation for its Stieltjes transform, depending on the spectral density of the underlying process. Applications to linear processes, functions of linear processes, and ARCH models are given.
机译:在本文中,我们将MarcI匕首enko-Pastur定理扩展为一类仅具有阶数为2矩的实值随机变量的弱弱相关序列。在轻度依赖条件下,该条件在许多情况下都易于验证,我们得出结论,相关样本协方差矩阵的极限频谱分布由其Stieltjes变换的显式方程表征,具体取决于基础过程的频谱密度。给出了线性过程的应用,线性过程的功能和ARCH模型。

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