Asymptotic Approximation of Nonparametric Regression Experiments with Unknown Variances

Citation
V. Carter, Andrew, Asymptotic Approximation of Nonparametric Regression Experiments with Unknown Variances, Annals of statistics , 35(4), 2007, pp. 1644-1673
Journal title
ISSN journal
00905364
Volume
35
Issue
4
Year of publication
2007
Pages
1644 - 1673
Database
ACNP
SICI code
Abstract
Asymptotic equivalence results for nonparametric regression experiments have always assumed that the variances of the observations are known. In practice, however the variance of each observation is generally considered to be an unknown nuisance parameter. We establish an asymptotic approximation to the nonparametric regression experiment when the value of the variance is an additional parameter to be estimated or tested. This asymptotically equivalent experiment has two components: the first contains all the information about the variance and the second has all the information about the mean. The result can be extended to regression problems where the variance varies slowly from observation to observation.