A weak invariance principle for cumulated functionals of the regressogram estimator with dependent data
Authors:
Jean Diebold a;
Na
mane Laib a
mane Laib a
| Affiliation: | a Universit Paris 6, Paris Cedex, France |
DOI:
10.1080/10485259408832607
Publication Frequency:
8 issues per year
Subjects:
Mathematical Economics;
Mathematical Finance;
Medical Statistics;
Statistical Theory & Methods;
Statistics;
Statistics for the Biological Sciences;
Stochastic Models & Processes;
Formats available:
PDF
(English)
View Article:
View Article (PDF)
Abstract
We establish a weak invariance principle for certain functionals of the regressogram estimator for regression or autoregression models where the data are strongly mixing. These functionals are constructed by cumulating the local discrepancies between the regressogram estimator and the corresponding regression function. As a byproduct, we obtain the limiting distribution of these functionals. Since the limiting process turns out to be a tractable time-changed Wiener process, we can derive from our results a family of possible nonparametric goodness-of-fit tests for the restriction to any compact interval of the regression or autoregression function. We then focus on a specially interesting test within this family. Using our preceding results, we provide estimates for the asymptotic behavior of the power of this test against both fixed and local alternatives.
|
| Keywords: Weak invariance principle; functional limiting distribution; regression function; autoregression; strong mixing; goodness-of-fit test |
| view references (22) : view citations |

Download Citation


Paris 6, Paris Cedex, France
CiteULike
Del.icio.us
BibSonomy
Connotea