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首页> 外文期刊>Stochastic Processes and Their Applications: An Official Journal of the Bernoulli Society for Mathematical Statistics and Probability >Asymptotic theory for large volatility matrix estimation based on high-frequency financial data
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Asymptotic theory for large volatility matrix estimation based on high-frequency financial data

机译:基于高频金融数据的大波动矩阵估计的渐近理论

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摘要

In financial practices and research studies, we often encounter a large number of assets. The availability of high-frequency financial data makes it possible to estimate the large volatility matrix of these assets. Existing volatility matrix estimators such as kernel realized volatility and pre-averaging realized volatility perform poorly when the number of assets is very large, and in fact they are inconsistent when the number of assets and sample size go to infinity. In this paper, we introduce threshold rules to regularize kernel realized volatility, pre-averaging realized volatility, and multi-scale realized volatility. We establish asymptotic theory for these threshold estimators in the framework that allows the number of assets and sample size to go to infinity. Their convergence rates are derived under sparsity on the large integrated volatility matrix. In particular we have shown that the threshold kernel realized volatility and threshold pre-averaging realized volatility can achieve the optimal rate with respect to the sample size through proper bias corrections, but the bias adjustments cause the estimators to lose positive semi-definiteness; on the other hand, in order to be positive semi-definite, the threshold kernel realized volatility and threshold pre-averaging realized volatility have slower convergence rates with respect to the sample size. A simulation study is conducted to check the finite sample performances of the proposed threshold estimators with over hundred assets. (C) 2016 Elsevier B.V. All rights reserved.
机译:在财务实践和研究中,我们经常遇到大量资产。高频金融数据的可用性使估算这些资产的巨大波动矩阵成为可能。当资产数量很大时,现有的波动率矩阵估计器(例如内核实现的波动率和预先平均的实现的波动率)表现不佳,实际上,当资产的数量和样本量达到无穷大时,它们的前后矛盾。在本文中,我们介绍了阈值规则来规范内核实现的波动率,预先平均实现的波动率和多尺度实现的波动率。我们在框架中为这些阈值估计量建立了渐近理论,使资产数量和样本量达到无穷大。它们的收敛速度是在大型综合波动率矩阵的稀疏性下得出的。特别地,我们已经表明,阈值内核实现的波动率和阈值预平均实现的波动率可以通过适当的偏差校正来实现相对于样本量的最佳速率,但是偏差调整会导致估计量失去正半确定性;另一方面,为了成为正半定值,阈值内核实现的波动性和阈值预平均实现的波动性相对于样本大小具有较慢的收敛速度。进行了仿真研究,以检查提议的具有超过一百种资产的阈值估计器的有限样本性能。 (C)2016 Elsevier B.V.保留所有权利。

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