Testing for Structural Changes in Large Dimensional Factor Models via Discrete Fourier Transform

Zhonghao Fu, Yongmiao Hong, Xia Wang
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引用次数: 2

Abstract

We propose a new test for structural changes in large dimensional factor models via a discrete Fourier transform (DFT) approach. If structural changes occur, the conventional principal component analysis fails to estimate common factors and factor loadings consistently. The estimated residuals will contain information about structural changes. Therefore, we can compare the DFT of the estimated residuals with the null (zero) spectrum implied by no structural change. The proposed test is powerful against both smooth structural changes and abrupt structural breaks with a possibly unknown number of breaks and unknown break dates in factor loadings. It can detect a class of local alternatives at the parametric rate. As a result, the test is asymptotically more efficient than the existing tests in the factor model literature. And our test is also robust to serial and cross-sectional dependence of unknown form without having to estimate any long-run variance-covariance matrix. Moreover, it is easy to implement and tuning parameter-free. Monte Carlo studies demonstrate its reasonable size and excellent power in detecting various forms of structural changes in factor loadings. In an application to the U.S. macroeconomic data, we find significant and robust evidence of time-varying factor loadings.
用离散傅立叶变换测试大尺寸因子模型的结构变化
我们通过离散傅立叶变换(DFT)方法提出了一种新的大维度因子模型结构变化测试方法。如果发生结构变化,传统的主成分分析不能一致地估计共同因素和因素负荷。估计的残差将包含有关结构变化的信息。因此,我们可以将估计残差的DFT与没有结构变化所隐含的零谱进行比较。所提出的测试对于平稳的结构变化和突变的结构断裂都是强大的,在因子加载中断裂的数量和断裂日期可能未知。它能以参数速率检测出一类局部备选项。因此,该检验比因子模型文献中现有的检验渐近地更有效。我们的测试对未知形式的序列和横截面依赖也具有鲁棒性,而无需估计任何长期方差-协方差矩阵。此外,它易于实现和无参数调优。蒙特卡罗研究证明了其合理的尺寸和在检测因子载荷中各种形式的结构变化方面的卓越能力。在对美国宏观经济数据的应用中,我们发现了时变因素负荷的重要而有力的证据。
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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