Bootstrap based nonparametric curve and confidence band estimates for spectral densities

R. Brcich, A. Zoubir
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引用次数: 1

Abstract

We consider the problem of global bandwidth optimisation and confidence interval estimation for spectral density estimates obtained by applying a nonparametric curve estimator to the periodogram. The use of a local quadratic regression smoother is examined as a possible way to reduce the bias inherent in classical kernel spectral density estimators, which are simply local mean regression smoothers. It is found that while quadratic smoothers are much less sensitive to a poor choice of bandwidth, they do not always outperform mean smoothers.
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基于自举法的非参数曲线和谱密度置信带估计
我们考虑了利用非参数曲线估计器对周期图进行谱密度估计的全局带宽优化和置信区间估计问题。使用局部二次回归平滑器作为一种可能的方法来减少经典核谱密度估计中固有的偏差,这是简单的局部平均回归平滑器。我们发现,虽然二次平滑对带宽的糟糕选择不那么敏感,但它们并不总是优于平均平滑。
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