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Volatility Martingale Difference Divergence Matrix and Its Application to Dimension Reduction for Multivariate Volatility

机译:波动率Difference差异散度矩阵及其在多元波动性降维中的应用

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In this article, we propose the so-called volatility martingale difference divergence matrix (VMDDM) to quantify the conditional variance dependence of a random vector given , building on the recent work on martigale difference divergence matrix (MDDM) that measures the conditional mean dependence. We further generalize VMDDM to the time series context and apply it to do dimension reduction for multivariate volatility, following the recent work by Hu and Tsay and Li et al. Unlike the latter two papers, our metric is easy to compute, can fully capture nonlinear serial dependence and involves less user-chosen numbers. Furthermore, we propose a variant of VMDDM and apply it to the estimation of conditional uncorrelated components model (Fan, Wang, and Yao 2008). Simulation and data illustration show that our method can perform well in comparison with the existing ones with less computational time, and can outperform others in cases of strong nonlinear dependence.
机译:在本文中,我们基于对可计算条件均值依赖性的mar差差异度矩阵(MDDM)的最新研究成果,提出了所谓的波动mar差异度矩阵(VMDDM)来量化给定随机向量的条件方差依赖性。继Hu和Tsay和Li等人最近的工作之后,我们进一步将VMDDM推广到时间序列上下文,并将其应用于多维波动的降维。与后两篇论文不同,我们的指标易于计算,可以完全捕获非线性序列相关性,并且涉及较少的用户选择数量。此外,我们提出了VMDDM的一种变体,并将其应用于条件不相关组件模型的估计(Fan,Wang和Yao 2008)。仿真和数据说明表明,该方法与现有方法相比具有较好的性能,且计算时间短,在非线性相关性强的情况下,其性能优于其他方法。

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