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首页> 外文期刊>Journal of Time Series Analysis >High-frequency sampling and kernel estimation for continuous-time moving average processes
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High-frequency sampling and kernel estimation for continuous-time moving average processes

机译:连续时间移动平均过程的高频采样和核估计

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摘要

Interest in continuous-time processes has increased rapidly in recent years, largely because of high-frequency data available in many applications. We develop a method for estimating the kernel function g of a second-order stationary Levy-driven continuous-time moving average (CMA) process Y based on observations of the discrete-time process Y~△ obtained by sampling Y at A, 1A, ,nA for small A. We approximate g by g~△ based on the Wold representation and prove its pointwise convergence to g as A→ 0 for continuous-time autoregressive moving average (CARMA) processes. Two non-parametric estimators of g△, on the basis of the innovations algorithm and the Durbin-Levinson algorithm, are proposed to estimate g. For a Gaussian CARMA process, we give conditions on the sample size n and the grid spacing A(n) under which the innovations estimator is consistent and asymptotically normal as n →∞. The estimators can be calculated from sampled observations of any CMA process, and simulations suggest that they perform well even outside the class of CARMA processes. We illustrate their performance for simulated data and apply them to the Brookhaven turbulent wind speed data. Finally, we extend results of Brockwell et al. (2012) for sampled CARMA processes to a much wider class of CMA processes.
机译:近年来,对连续时间过程的兴趣迅速增加,这在很大程度上是由于许多应用程序中都提供了高频数据。我们根据对A,1A处的Y进行采样获得的离散时间过程Y〜△的观察结果,开发了一种估计二阶稳态Levy驱动连续时间移动平均(CMA)过程Y的核函数g的方法。对于小A,我们用Wold表示对g进行近似计算,并证明对于连续时间自回归移动平均(CARMA)过程,其点向收敛为g→A→0。在创新算法和Durbin-Levinson算法的基础上,提出了两个非参数的g△估计量来估计g。对于高斯CARMA过程,我们给出样本大小n和网格间距A(n)的条件,在这些条件下创新估计量是一致的,并且渐近正态为n→∞。可以从任何CMA过程的采样观测值中计算出估计量,并且模拟表明,即使在CARMA过程类别之外,它们的性能也很好。我们说明了它们在模拟数据中的性能,并将其应用于布鲁克海文湍流风速数据。最后,我们扩展了Brockwell等人的结果。 (2012年)将抽样的CARMA流程扩展到更广泛的CMA流程类别。

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