Spot Variance Path Estimation and Its Application to High Frequency Jump Testing

Charles S. Bos, P. Janus, S. J. Koopman
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引用次数: 27

Abstract

This paper considers spot variance path estimation from datasets of intraday high-frequency asset prices in the presence of diurnal variance patterns, jumps, leverage effects, and microstructure noise. We rely on parametric and nonparametric methods. The estimated spot variance path can be used to extend an existing high-frequency jump test statistic, to detect arrival times of jumps, and to obtain distributional characteristics of detected jumps. The effectiveness of our approach is explored through Monte Carlo simulations. It is shown that sparse sampling for mitigating the impact of microstructure noise has an adverse effect on both spot variance estimation and jump detection. In our approach, we can analyze high-frequency price observations that are contaminated with microstructure noise and rounding effects without the need for sparse sampling. An empirical illustration is presented for the intraday EUR/USD exchange rates. Our main finding is that fewer jumps are detected when sampling intervals increase. Copyright The Author 2012. Published by Oxford University Press. All rights reserved. For Permissions, please e-mail: journals.permissions@oup.com., Oxford University Press.
点方差路径估计及其在高频跳变检测中的应用
本文考虑了在存在日方差模式、跳跃、杠杆效应和微观结构噪声的情况下,日内高频资产价格数据集的现货方差路径估计。我们依赖于参数和非参数方法。估计的点方差路径可用于扩展现有的高频跳变检验统计量,检测跳变的到达时间,并获得检测到的跳变的分布特征。通过蒙特卡洛模拟验证了该方法的有效性。研究表明,利用稀疏采样来减轻微观结构噪声的影响对点方差估计和跳变检测都有不利影响。在我们的方法中,我们可以分析受微观结构噪声和舍入效应污染的高频价格观测值,而不需要稀疏采样。本文给出了日内欧元/美元汇率的实证说明。我们的主要发现是,当采样间隔增加时,检测到的跳变更少。版权所有作者2012。牛津大学出版社出版。版权所有。有关许可,请发送电子邮件:journals.permissions@oup.com.,牛津大学出版社。
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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