On Bootstrapping Kernel Spectral Estimates 论文

1992The Annals of Statistics引用 219
Neural Networks and ApplicationsGaussian Processes and Bayesian Inference

摘要

An approach to bootstrapping kernel spectral density estimates is described which is based on resampling from the periodogram of the original data. We show that it is asymptotically valid under suitable conditions, and we illustrate its performance for a medium-sized time series sample with a small simulation study.