Kernel estimation for time series: An asymptotic theory
We consider kernel density and regression estimation for a wide class of nonlinear time series models. Asymptotic normality and uniform rates of convergence of kernel estimators are established under mild regularity conditions. Our theory is developed under the new framework of predictive dependence measures which are directly based on the data-generating mechanisms of the underlying processes. The imposed conditions are different from the classical strong mixing conditions and they are related to the sensitivity measure in the prediction theory of nonlinear time series.
Year of publication: |
2010
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Authors: | Wu, Wei Biao ; Huang, Yinxiao ; Huang, Yibi |
Published in: |
Stochastic Processes and their Applications. - Elsevier, ISSN 0304-4149. - Vol. 120.2010, 12, p. 2412-2431
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Publisher: |
Elsevier |
Keywords: | Kernel estimation Nonlinear time series Regression Central limit theorem Martingale Markov chains Linear processes Sensitivity measure Prediction theory Mean concentration function Fejer kernel |
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