波动率的拉普拉斯自举变换

IF 1.9 3区 经济学 Q2 ECONOMICS Quantitative Economics Pub Date : 2023-07-28 DOI:10.3982/qe1929
Ulrich Hounyo, Zhi Liu, Rasmus T. Varneskov
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引用次数: 0

摘要

本文研究了用自举法对定跨度环境下波动率的已实现拉普拉斯变换的推理。具体来说,由于标准野生自举过程提供不一致推理,我们提出了一个局部高斯(LG)自举,建立了它的一阶渐近有效性,并使用Edgeworth展开式来证明LG自举推理实现了二阶渐近改进。此外,我们提供了新的基于拉普拉斯变换的点方差、协方差、相关和两个半鞅之间的β估计,并使我们的自举过程适应必要的场景。我们建立了我们的估计量的中心极限理论和它们相关的自举方法的一阶渐近有效性。仿真结果表明,在有限样本下,LG自举优于现有的可行推理理论和野生自举方法。最后,我们通过检验2008年全球金融危机期间股票和债券之间的一致性,以及2020年COVID-19大流行期间股票抛售,并通过预测练习来说明新方法的使用。
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Bootstrapping Laplace transforms of volatility
This paper studies inference for the realized Laplace transform (RLT) of volatility in a fixed-span setting using bootstrap methods. Specifically, since standard wild bootstrap procedures deliver inconsistent inference, we propose a local Gaussian (LG) bootstrap, establish its first-order asymptotic validity, and use Edgeworth expansions to show that the LG bootstrap inference achieves second-order asymptotic refinements. Moreover, we provide new Laplace transform-based estimators of the spot variance as well as the covariance, correlation, and beta between two semimartingales, and adapt our bootstrap procedure to the requisite scenario. We establish central limit theory for our estimators and first-order asymptotic validity of their associated bootstrap methods. Simulations demonstrate that the LG bootstrap outperforms existing feasible inference theory and wild bootstrap procedures in finite samples. Finally, we illustrate the use of the new methods by examining the coherence between stocks and bonds during the global financial crisis of 2008 as well as the COVID-19 pandemic stock sell-off during 2020, and by a forecasting exercise.
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来源期刊
CiteScore
4.10
自引率
5.60%
发文量
28
审稿时长
52 weeks
期刊最新文献
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