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首页> 外文期刊>Bernoulli: official journal of the Bernoulli Society for Mathematical Statistics and Probability >Asymptotically efficient estimators for self-similar stationary Gaussian noises under high frequency observations
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Asymptotically efficient estimators for self-similar stationary Gaussian noises under high frequency observations

机译:在高频观测下,渐近高斯高斯噪声的渐近高效估计

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摘要

This paper proposes feasible asymptotically efficient estimators for a certain class of Gaussian noises with self-similarity and stationarity properties, which includes the fractional Gaussian noises, under high frequency observations. In this setting, the optimal rate of estimation depends on whether either the Hurst or diffusion parameters is known or not. This is due to the singularity of the asymptotic Fisher information matrix for simultaneous estimation of the above two parameters. One of our key ideas is to extend the Whittle estimation method to the situation of high frequency observations. We show that our estimators are asymptotically efficient in Fisher's sense. Further by Monte-Carlo experiments, we examine finite sample performances of our estimators. Finite sample modifications of the asymptotic variances of the estimators are also given, which exhibit almost perfect fits to the numerical results.
机译:本文提出了具有自相似性和具有自适性特性的一定类高斯噪声的可行渐近估计,包括在高频观测下包括分数高斯噪声。 在此设置中,估计的最佳速率取决于urst或扩散参数是否已知。 这是由于渐近Fisher信息矩阵的奇异性,用于同时估计上述两个参数。 我们的关键思想之一是将Whittle估计方法扩展到高频观测的情况。 我们表明,我们的估算变差是在Fisher的感觉中有效的。 进一步通过Monte-Carlo实验,我们检查我们估算器的有限样本性能。 还给出了估算器的渐近变差的有限样品修改,其展示了几乎完美的拟合对数值结果。

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