Bootstrap of Kernel Smoothing in Nonlinear Time Series

نویسنده

  • Jens-Peter Kreiss
چکیده

Kernel smoothing in nonparametric autoregressive schemes ooers a powerful tool in modelling time series. In this paper it is shown that the bootstrap can be used for estimating the distribution of kernel smoothers. This can be done by mimicking the stochastic nature of the whole process in the bootstrap resampling or by generating a simple regression model. Consistency of these bootstrap procedures will be shown.

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تاریخ انتشار 1997