On Robustness of Model-Based Bootstrap Schemes in Nonparametric Time Series Analysis |
| |
Authors: | Michael H Neumann |
| |
Institution: | Universit?t zu K?ln , Germany |
| |
Abstract: | Theory in time series analysis is often developed under the assumption of finite-dimensional models for the data generating process. Whereas corresponding estimators such as those of a conditional mean function are reasonable even if the true dependence mechanism is more complex, it is usually necessary to capture the whole dependence structure asymptotically for the bootstrap to be valid. In contrast, we show that certain simplified bootstrap schemes which imitate only some aspects of the time series are consistent for quantities arising in nonparametric statistics. To this end, we generalize the well-known "whitening by windowing" principle to joint distributions of nonparametric estimators of the autoregression function. Consequently, we obtain that model-based nonparametric bootstrap schemes remain valid for supremum-type functionals as long as they mimic those finite-dimensional joint distributions consistently which determine the quantity of interest. As an application, we show that simple regression-type bootstrap schemes can be applied for the determination of critical values for nonparametric tests of parametric or semiparametric hypotheses on the autoregression function in the context of a general process. |
| |
Keywords: | Bootstrap Nonparametric Autoregression Nonparametric Regression Strong Approximation Weak Dependence Whitening By Windowing |
|
|