高维时间序列的因子建模:因子数量的推断

Clifford Lam, Q. Yao
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引用次数: 415

摘要

本文从降维的角度研究了高维时间序列的因子建模问题。在平稳设置下,推理是简单的,因为因子的数量和因子负荷都是根据非负确定矩阵的特征分析来估计的,因此适用于时间序列的维数为几千的顺序。在两种情况下研究了该方法的渐近性质:(1)当时间序列的维数固定时,样本容量趋于无穷大;(2)样本量和时间序列维数同时趋于无穷。特别是,我们的零特征值估计器具有更快的收敛(或更慢的散度)速率,因此使因子数量的估计更容易。特别是当时间序列的样本量和维数同时趋于无穷时,特征值的估计量不再一致。然而,我们对因子数量的估计器(基于估计的特征值的比率)仍然工作良好。此外,该估计显示了所谓的“维数祝福”性质,即当时间序列的维数增加时,估计的性能可能会提高。研究了不同强度因素时的两步处理方法。文中还报道了模拟数据和实际数据的数值说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Factor modeling for high-dimensional time series: inference for the number of factors
This paper deals with the factor modeling for high-dimensional time series based on a dimension-reduction viewpoint. Under stationary settings, the inference is simple in the sense that both the number of factors and the factor loadings are estimated in terms of an eigenanalysis for a nonnegative definite matrix, and is therefore applicable when the dimension of time series is on the order of a few thousands. Asymptotic properties of the proposed method are investigated under two settings: (i) the sample size goes to infinity while the dimension of time series is fixed; and (ii) both the sample size and the dimension of time series go to infinity together. In particular, our estimators for zero-eigenvalues enjoy faster convergence (or slower divergence) rates, hence making the estimation for the number of factors easier. In particular, when the sample size and the dimension of time series go to infinity together, the estimators for the eigenvalues are no longer consistent. However, our estimator for the number of the factors, which is based on the ratios of the estimated eigenvalues, still works fine. Furthermore, this estimation shows the so-called “blessing of dimensionality” property in the sense that the performance of the estimation may improve when the dimension of time series increases. A two-step procedure is investigated when the factors are of different degrees of strength. Numerical illustration with both simulated and real data is also reported.
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