具有同质结构的高维动态协方差矩阵

High-Dimensional Dynamic Covariance Matrices With Homogeneous Structure

Journal of Business & Economic Statistics · 2020
被引 11
人大 AABS 4

中文导读

针对高维动态协方差矩阵估计中的维度灾难和动态引入困难,提出嵌入同质结构的动态模型,并给出估计方法和渐近性质,在投资组合分配中表现优于常用方法。

Abstract

High-dimensional covariance matrices appear in many disciplines. Much literature has devoted to the research in high-dimensional constant covariance matrices. However, constant covariance matrices are not sufficient in applications, for example, in portfolio allocation, dynamic covariance matrices would be more appropriate. As argued in this article, there are two difficulties in the introduction of dynamic structures into covariance matrices: (1) simply assuming each entry of a covariance matrix is a function of time to introduce the dynamic needed would not work; (2) there is a risk of having too many unknowns to estimate due to the high dimensionality. In this article, we propose a dynamic structure embedded with a homogeneous structure. We will demonstrate the proposed dynamic structure makes more sense in applications and avoids, in the meantime, too many unknown parameters/functions to estimate, due to the embedded homogeneous structure. An estimation procedure is also proposed to estimate the proposed high-dimensional dynamic covariance matrices, and asymptotic properties are established to justify the proposed estimation procedure. Intensive simulation studies show the proposed estimation procedure works very well when the sample size is finite. Finally, we apply the proposed high-dimensional dynamic covariance matrices to portfolio allocation. It is interesting to see the resulting portfolio yields much better returns than some commonly used ones.

高维动态协方差矩阵齐次结构协方差矩阵估计渐近性质