This paper studies the impact of bootstrap procedure on the eigenvalue distributions of the sample covariance matrix under the high-dimensional factor structure. We provide asymptotic distributions for the top eigenvalues of bootstrapped sample covariance matrix under mild conditions. After bootstrap, the spiked eigenvalues which are driven by common factors will converge weakly to Gaussian limits via proper scaling and centralization. However, the largest non-spiked eigenvalue is mainly determined by order statistics of bootstrap resampling weights, and follows extreme value distribution. Based on the disparate behavior of the spiked and non-spiked eigenvalues, we propose innovative methods to test the number of common factors. According to the simulations and a real data example, the proposed methods are the only ones performing reliably and convincingly under the existence of both weak factors and cross-sectionally correlated errors. Our technical details contribute to random matrix theory on spiked covariance model with convexly decaying density and unbounded support, or with general elliptical distributions.
翻译:本文研究靴子捕捉程序对高维系数结构下样本共变矩阵的二次值分布的影响。 我们提供在温和条件下靴子样品共变矩阵顶层的无光值分布。 在靴子捕捉后,由共同因素驱动的加注的双人值通过适当缩放和集中作用,将微弱地汇合到高斯的界限。 然而,最大的非二次值主要取决于靴子采样重量的顺序统计,并跟随极端值分布。 根据加注和非非二次均振动值的不同行为,我们提出了测试共同因素数目的创新方法。根据模拟和真实数据实例,拟议方法是唯一在存在弱因素和交叉相关错误的情况下可靠和令人信服的。我们的技术细节有助于用螺旋共变模型的随机矩阵理论,这些模型具有等量衰减密度和无边积支持,或一般椭圆分布。