Title of article
Local asymptotics for polynomial spline regression.
Author/Authors
Huang، Jianhua Z. نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2003
Pages
-15
From page
16
To page
0
Abstract
In this paper we develop a general theory of local asymptotics for least squares estimates over polynomial spline spaces in a regression problem. The polynomial spline spaces we consider include univariate splines, tensor product splines, and bivariate or multivariate splines on triangulations. We establish asymptotic normality of the estimate and study the magnitude of the bias due to spline approximation. The asymptotic normality holds uniformly over the points where the regression function is to be estimated and uniformly over a broad class of design densities, error distributions and regression functions. The bias is controlled by the minimum L_(infinity) norm of the error when the target regression function is approximated by a function in the polynomial spline space that is used to define the estimate. The control of bias relies on the stability in L_(infinity) norm of L_2 projections onto polynomial spline spaces. Asymptotic normality of least squares estimates over polynomial or trigonometric polynomial spaces is also treated by the general theory. In addition, a preliminary analysis of additive models is provided.
Keywords
Least squares , polynomial regression , regression spline , Asymptotic normality , Nonparametric regression
Journal title
Annals of Statistics
Serial Year
2003
Journal title
Annals of Statistics
Record number
74527
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