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Inference for local distributions at high sampling frequencies: A bootstrap approach

机译:在高采样频率下的本地分布推断:引导方法

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We study inference for the local innovations of Ito semimartingales. Specifically, we construct a resampling procedure for the empirical CDF of high-frequency innovations that have been standardized using a nonparametric estimate of its stochastic scale (volatility) and truncated to rid the effect of "large" jumps. Our locally dependent wild bootstrap (LDWB) accommodate issues related to the stochastic scale and jumps as well as account for a special block-wise dependence structure induced by sampling errors. We show that the LDWB replicates first and second-order limit theory from the usual empirical process and the stochastic scale estimate, respectively, in addition to an asymptotic bias. Moreover, we design the LDWB sufficiently general to establish asymptotic equivalence between it and a nonparametric local block bootstrap, also introduced here, up to second-order distribution theory. Finally, we introduce LDWB-aided Kolmogorov-Smirnov tests for local Gaussianity as well as local von-Mises statistics, with and without bootstrap inference, and establish their asymptotic validity using the second-order distribution theory. The finite sample performance of CLT and LDWB-aided local Gaussianity tests is assessed in a simulation study and an empirical application. Whereas the CLT test is oversized, even in large samples, the size of the LDWB tests is accurate, even in small samples. The empirical analysis verifies this pattern, in addition to providing new insights about the fine scale distributional properties of innovations to equity indices, commodities and exchange rates. (C) 2019 Elsevier B.V. All rights reserved.
机译:我们研究ITO半饰品的当地创新的推断。具体地,我们构建了一种重新采样程序,用于使用随机缩放(波动性)的非参数估计来标准化的高频创新的实证CDF,并截断以摆脱“大”跳跃的效果。我们本地依赖的野外自发(LDWB)适应与随机秤和跳跃相关的问题,以及通过采样误差引起的特殊块状依赖结构的帐户。我们表明,除了渐近偏差之外,LDWB还分别从通常的经验过程和随机尺度估计来复制第一和二阶限制理论。此外,我们将LDWB设计得足够一般,以建立它与非参数局部块的渐近等值,也介绍了二阶分布理论。最后,我们介绍了LDWB-辅助Kolmogorov-Smirnov测试,用于本地高斯和局部Von-Mises统计,有和没有自举推理,并使用二阶分配理论建立它们的渐近有效性。在模拟研究中评估了CLT和LDWB辅助局部高斯度测试的有限样本性能和实证应用。虽然CLT测试超大了,即使在大型样品中,即使在小型样本中,也可以准确地进行LDWB测试的大小。除了为股票指数,商品和汇率提供创新的精细分布特性的新见解之外,实证分析还核实了这种模式。 (c)2019年Elsevier B.V.保留所有权利。

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