Performance of estimators of quadratic variation based on high frequency data—empirical review

J. Gayomey, A. Kostin
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Abstract

Recently, advances in computer technology and data recording and storage have made high-frequency financial data readily available to researchers. As a result, the volatility literature has steadily progressed toward the use of higher-frequency data. However, the move towards the use of higher-frequency financial data in the estimation of volatility of financial returns has resulted in the development of many realised volatility measures of asset return variability based on a variety of different assumptions and functional forms and thus making theoretical comparison and selection of the estimators for empirical applications very difficult if not impossible. This article provides an empirical review on the performance of estimators of quadratic variation/integrated variance based on high-frequency data to aid their application in empirical analysis. The result of the review shows that no single estimator works best in all situations; however, the more sophisticated realised measures, in particular the TSRV and KRV, are superior to the other estimators in terms of their estimation accuracy in the presence of market microstructure noise.
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基于高频数据的二次变差估计器的性能
最近,计算机技术以及数据记录和存储的进步使研究人员可以随时获得高频金融数据。因此,波动性文献稳步向使用高频数据的方向发展。然而,在财务回报波动率的估计中使用频率更高的金融数据的趋势导致了基于各种不同假设和函数形式的资产回报可变性的许多已实现波动率度量的发展,从而使实证应用的估计器的理论比较和选择变得非常困难,如果不是不可能的话。本文对基于高频数据的二次变差/积分方差估计器的性能进行了实证研究,以帮助它们在实证分析中的应用。审查的结果表明,没有一个估计器在所有情况下都是最好的;然而,更复杂的实现测量,特别是TSRV和KRV,在存在市场微观结构噪声的估计精度方面优于其他估计器。
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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