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Data-Adaptive Estimation of Time-Varying Spectral Densities

机译:数据 - 自适应估计时变频谱密度

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摘要

This article introduces a data-adaptive nonparametric approach for the estimation of time-varying spectral densities from nonstationary time series. Time-varying spectral densities are commonly estimated by local kernel smoothing. The performance of these nonparametric estimators, however, depends crucially on the smoothing bandwidths that need to be specified in both time and frequency direction. As an alternative and extension to traditional bandwidth selection methods, we propose an iterative algorithm for constructing localized smoothing kernels data-adaptively. The main idea, inspired by the concept of propagation-separation, is to determine for a point in the time-frequency plane the largest local vicinity over which smoothing is justified by the data. By shaping the smoothing kernels nonparametrically, our method not only avoids the problem of bandwidth selection in the strict sense but also becomes more flexible. It not only adapts to changing curvature in smoothly varying spectra but also adjusts for structural breaks in the time-varying spectrum. Supplementary materials, including the R package tvspecAdapt containing an implementation of the routine, are available online.
机译:本文介绍了一种数据自适应非参数方法,用于估计来自非持久时间序列的时变频谱密度。通过本地内核平滑常见地估计时变频谱密度。然而,这些非参数估计器的性能庞大依赖于需要在两个时间和频率方向上指定的平滑带宽。作为传统带宽选择方法的替代和扩展,我们提出了一种迭代算法,用于构建自适应的局部平滑内核。灵感来自传播分离的概念的主要思想是确定时频平面中的点,最大的局部附近,平滑是由数据合理的。通过非视野识别地塑造平滑核,我们的方法不仅避免了严格意义上的带宽选择的问题,而且变得更加灵活。它不仅适应在平稳变化的光谱中改变曲率,还适用于时变频谱中的结构断裂。在线提供含有r封装TVSPECADAPT的补充材料,可在线获取。

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