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Bootstrapping realized multivariate volatility measures

机译:自举实现多元波动率衡量

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摘要

We propose a bootstrap method for statistics that are a function of multivariate high frequency returns such as realized regression, covariance and correlation coefficients. We show that the finite sample performance of the bootstrap is superior to the existing first-order asymptotic theory. Nevertheless, and contrary to the existing results in the bootstrap literature for regression models subject to error heteroskedasticity, the Edgeworth expansion for the pairs bootstrap that we develop here shows that this method is not second-order accurate. We argue that this is due to the fact that the conditional mean parameters of realized regression models are heterogeneous under stochastic volatility.
机译:我们提出了一种用于统计的自举方法,该方法是多元高频回报(例如已实现的回归,协方差和相关系数)的函数。我们表明,引导程序的有限样本性能优于现有的一阶渐近理论。然而,与存在误差异方差的回归模型的引导程序文献中的现有结果相反,我们在此处开发的对引导程序的Edgeworth展开表明该方法不是二阶准确的。我们认为这是由于以下事实:在随机波动率下,已实现回归模型的条件均值参数是异构的。

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