Detection of Multiple Structural Breaks in Large Covariance Matrices

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Yu-Ning Li, Degui Li, P. Fryzlewicz
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引用次数: 8

Abstract

ABSTRACT This article studies multiple structural breaks in large contemporaneous covariance matrices of high-dimensional time series satisfying an approximate factor model. The breaks in the second-order moment structure of the common components are due to sudden changes in either factor loadings or covariance of latent factors, requiring appropriate transformation of the factor models to facilitate estimation of the (transformed) common factors and factor loadings via the classical principal component analysis. With the estimated factors and idiosyncratic errors, an easy-to-implement CUSUM-based detection technique is introduced to consistently estimate the location and number of breaks and correctly identify whether they originate in the common or idiosyncratic error components. The algorithms of Wild Binary Segmentation for Covariance (WBS-Cov) and Wild Sparsified Binary Segmentation for Covariance (WSBS-Cov) are used to estimate breaks in the common and idiosyncratic error components, respectively. Under some technical conditions, the asymptotic properties of the proposed methodology are derived with near-optimal rates (up to a logarithmic factor) achieved for the estimated breaks. Monte Carlo simulation studies are conducted to examine the finite-sample performance of the developed method and its comparison with other existing approaches. We finally apply our method to study the contemporaneous covariance structure of daily returns of S&P 500 constituents and identify a few breaks including those occurring during the 2007–2008 financial crisis and the recent coronavirus (COVID-19) outbreak. An package “ ” is provided to implement the proposed algorithms.
大协方差矩阵中多个结构断裂的检测
摘要本文研究了满足近似因子模型的高维时间序列的大同期协方差矩阵中的多个结构断裂。公共分量的二阶矩结构的中断是由于因子载荷或潜在因子协方差的突然变化,需要对因子模型进行适当的变换,以便于通过经典主分量分析估计(变换的)公共因子和因子载荷。利用估计的因素和特殊误差,引入了一种易于实现的基于CUSUM的检测技术,以一致地估计中断的位置和数量,并正确识别它们是起源于常见还是特殊误差分量。分别使用协方差的野生二进制分割(WBS Cov)和协方差的野生稀疏二进制分割(WSBS Cov)算法来估计常见和特殊误差分量的中断。在某些技术条件下,推导出了所提出方法的渐近性质,估计断裂达到了接近最优的速率(高达对数因子)。进行了蒙特卡罗模拟研究,以检验所开发的方法的有限样本性能,并将其与其他现有方法进行比较。最后,我们应用我们的方法来研究标准普尔500指数成分股每日收益的同期协方差结构,并确定一些中断,包括2007-2008年金融危机和最近冠状病毒(新冠肺炎)爆发期间发生的中断。提供了一个包“”来实现所提出的算法。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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