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首页> 外文期刊>Journal of Econometrics >A new semiparametric estimation approach for large dynamic covariance matrices with multiple conditioning variables
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A new semiparametric estimation approach for large dynamic covariance matrices with multiple conditioning variables

机译:具有多个调节变量的大动态协方差矩阵的新半扫描估计方法

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This paper studies the estimation of large dynamic covariance matrices with multiple conditioning variables. We introduce an easy-to-implement semiparametric method to estimate each entry of the covariance matrix via model averaging marginal regression, and then apply a shrinkage technique to obtain the dynamic covariance matrix estimation. Under some regularity conditions, we derive the asymptotic properties for the proposed estimators including the uniform consistency with general convergence rates. We further consider extending our methodology to deal with the scenarios: (i) the number of conditioning variables is divergent as the sample size increases, and (ii) the large covariance matrix is conditionally sparse relative to contemporaneous market factors. We provide a simulation study that illustrates the finite-sample performance of the developed methodology. We also provide an application to financial portfolio choice from daily stock returns. (C) 2019 Elsevier BV. All rights reserved.
机译:本文研究了多个调节变量的大动态协方差矩阵的估计。我们介绍了一种易于实现的半造型方法来估计协方差矩阵的每个进入通过模型平均边缘回归,然后应用收缩技术以获得动态协方差矩阵估计。在一些规律条件下,我们推导出拟议估计的渐近性质,包括均匀融合与一般会聚率的一致性。我们进一步考虑扩展我们的方法来处理这种情况:(i)调节变量的数量随着样本大小的增加而发散,并且(ii)大的协方差矩阵相对于同期市场因素有条件稀疏。我们提供了一种仿真研究,说明了开发方法的有限样本性能。我们还向日常股票回报提供金融投资组合选择的申请。 (c)2019年Elsevier BV。版权所有。

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