高维时间序列的因子分析:一致的估计和高效的计算

Qiang Xia, H. Wong, Shirun Shen, Kejun He
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引用次数: 2

摘要

为了处理高维平稳时间序列的因子分析,本文提出了一种综合了三种思想的新方法。首先,基于非负定矩阵的特征值,我们提出了一种一致确定因子数量的新方法。当因子模型中同时存在弱因子和强因子时,该方法具有单步计算效率高的特点。其次,建议对因子加载矩阵与其估计值之间的差进行新的测量,以克服由于任何几何旋转而导致的加载矩阵的不可识别性。在这种度量下,我们还研究了我们提出的方法的渐近结果,它具有“维数的祝福”。最后,利用估计因子对潜在向量自回归(VAR)模型进行分析,使估计系数的收敛速度与观察VAR模型样本时一样快。为了支持我们在一致性和计算效率方面的结果,通过仿真和一个实际数据实例的分析来检验所提出方法的有限样本性能。
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Factor analysis for high‐dimensional time series: Consistent estimation and efficient computation
To deal with the factor analysis for high‐dimensional stationary time series, this paper suggests a novel method that integrates three ideas. First, based on the eigenvalues of a non‐negative definite matrix, we propose a new approach for consistently determining the number of factors. The proposed method is computationally efficient with a single step procedure, especially when both weak and strong factors exist in the factor model. Second, a fresh measurement of the difference between the factor loading matrix and its estimate is recommended to overcome the nonidentifiability of the loading matrix due to any geometric rotation. The asymptotic results of our proposed method are also studied under this measurement, which enjoys “blessing of dimensionality.” Finally, with the estimated factors, the latent vector autoregressive (VAR) model is analyzed such that the convergence rate of the estimated coefficients is as fast as when the samples of VAR model are observed. In support of our results on consistency and computational efficiency, the finite sample performance of the proposed method is examined by simulations and the analysis of one real data example.
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