Estimating and Testing High Dimensional Factor Models With Multiple Structural Changes

B. Baltagi, C. Kao, Fa Wang
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引用次数: 26

Abstract

This paper considers multiple changes in the factor loadings of a high dimensional factor model occurring at dates that are unknown but common to all subjects. Since the factors are unobservable, the problem is converted to estimating and testing structural changes in the second moments of the pseudo factors. We consider both joint and sequential estimation of the change points and show that the distance between the estimated and the true change points is Op(1). We find that the estimation error contained in the estimated pseudo factors has no effect on the asymptotic properties of the estimated change points as the cross-sectional dimension N and the time dimension T go to infinity jointly. No N-T ratio condition is needed. We also propose (i) tests for the null of no change versus the alternative of l changes (ii) tests for the null of l changes versus the alternative of l + 1 changes, and show that using estimated factors asymptotically has no effect on their limit distributions if √T/N→0. These tests allow us to make inference on the presence and number of structural changes. Simulation results show good performance of the proposed procedure. In an application to US quarterly macroeconomic data we detect two possible breaks.
具有多重结构变化的高维因子模型的估计与检验
本文考虑了一个高维因子模型在未知日期发生的因子负荷的多重变化,但对所有受试者来说都是共同的。由于这些因素是不可观察的,所以问题被转化为估计和测试伪因素的第二矩的结构变化。我们同时考虑变化点的联合估计和顺序估计,并证明估计的变化点与真实的变化点之间的距离为Op(1)。我们发现,当截面维N和时间维T共同趋于无穷时,估计伪因子中包含的估计误差对估计变点的渐近性质没有影响。不需要N-T比条件。我们还提出了(i)无变化的零值与l变化的替代的检验(ii) l变化的零值与l + 1变化的替代的检验,并表明当T/N→0时,渐近使用估计因子对它们的极限分布没有影响。这些测试使我们能够对结构变化的存在和数量做出推断。仿真结果表明了该方法的良好性能。在对美国季度宏观经济数据的应用中,我们发现了两种可能的突破。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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