From Large to Vast: Composite Forecasting of Vast-Dimensional Realized Covariance Matrices Using Factor State-Space Models

Jan Patrick Hartkopf
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引用次数: 1

Abstract

We propose a dynamic factor state-space model for the prediction of high-dimensional realized covariance matrices of asset returns. Using a block LDL decomposition of the joint covariance matrix of assets and factors, we express the realized covariance matrix of the individual assets similar to an approximate factor model. We model the individual parts, i.e., the factor and residual covariances as well as the factor loadings, independently via a tractable state-space approach. This results in closed-form Matrix-F predictive densities for the distinct covariance elements and Student's t predictive densities for the factor loadings. In an out-of-sample forecasting and portfolio selection exercise we compare the performance of the proposed factor model under different specifications of the residual dynamics. These includes block diagonal residuals based on the GICS sector classifications and strict diagonality assumptions as well as combinations of both using linear shrinkage. We find that the proposed model performs very well in an empirical application to realized covariance matrices for 225 NYSE traded stocks using the well-known Fama-French factors and sector-specific factors represented by Exchange Traded Funds (ETFs).
从大到广:利用因子状态空间模型对大维度已实现协方差矩阵进行复合预测
本文提出了一种动态因子状态空间模型,用于预测高维已实现的资产收益协方差矩阵。通过对资产和因素的联合协方差矩阵进行块LDL分解,我们表达了类似于近似因子模型的单个资产的已实现协方差矩阵。我们通过一种可处理的状态空间方法独立地建模各个部分,即因子和剩余协方差以及因子负载。这导致不同协方差元素的封闭式矩阵f预测密度和因子负载的Student's t预测密度。在样本外预测和投资组合选择练习中,我们比较了在不同规格的剩余动态下提出的因子模型的性能。其中包括基于GICS部门分类和严格对角性假设的块对角残差,以及使用线性收缩的两者的组合。我们发现所提出的模型在使用著名的Fama-French因子和以交易所交易基金(etf)为代表的行业特定因子实现225只纽约证券交易所交易股票的协方差矩阵的实证应用中表现非常好。
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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