高维可分离样本协方差矩阵的尖峰特征值

Bo Zhang, Jiti Gao, G. Pan, Yanrong Yang
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引用次数: 0

摘要

本文建立了具有截面依赖和样本结构依赖的高维数据样本协方差矩阵的尖刺经验特征值的渐近性质。从已有的理论结果中发现,在某些情况下,尖刺的经验特征值将反映相关样本结构而不是横截面结构,这表明主成分分析(PCA)对横截面结构的推断可能不准确。举例说明了一些常用的基于尖刺经验特征值的统计错误地估计了公因子的真实数目。作为高维时间序列的一个应用,我们提出了一个检验统计量来区分单位根和因子结构,并在模拟数据上证明了其有效的有限样本性能。然后将我们的结果应用于分析经合组织医疗保健支出数据和美国死亡率数据,两者都具有横断面依赖性和非平稳时间依赖性。值得一提的是,我们为Lee和Carter[25]在死亡率预测方面的基准论文提供了统计证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spiked Eigenvalues of High-Dimensional Separable Sample Covariance Matrices
This paper establishes asymptotic properties for spiked empirical eigenvalues of sample covariance matrices for high-dimensional data with both cross-sectional dependence and a dependent sample structure. A new finding from the established theoretical results is that spiked empirical eigenvalues will reflect the dependent sample structure instead of the cross-sectional structure under some scenarios, which indicates that principal component analysis (PCA) may provide inaccurate inference for cross-sectional structures. An illustrated example is provided to show that some commonly used statistics based on spiked empirical eigenvalues misestimate the true number of common factors. As an application of high-dimensional time series, we propose a test statistic to distinguish the unit root from the factor structure and demonstrate its effective finite sample performance on simulated data. Our results are then applied to analyze OECD healthcare expenditure data and U.S. mortality data, both of which possess cross-sectional dependence as well as non-stationary temporal dependence. It is worth mentioning that we contribute to statistical justification for the benchmark paper by Lee and Carter [25] in mortality forecasting.
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