Bivariate Tensor-Product B-Splines in a Partly Linear Model
In some applications, the mean or median response is linearly related to some variables but the relation to additional variables are not easily parameterized. Partly linear models arise naturally in such circumstances. Suppose that a random sample {(Ti, Xi, Yi),i=1, 2, ..., n} is modeled byYi=XTi[beta]0+g0(Ti)+errori, whereYiis a real-valued response,Xi[set membership, variant]RpandTiranges over a unit square, andg0is an unknown function with a certain degree of smoothness. We make use of bivariate tensor-product B-splines as an approximation of the functiong0and consider M-type regression splines by minimization of [summation operator]ni=1 [rho](Yi-XTi[beta]-gn(Ti)) for some convex function[rho]. Mean, median and quantile regressions are included in this class. We show under appropriate conditions that the parameter estimate of[beta]achieves its information bound asymptotically and the function estimate ofg0attains the optimal rate of convergence in mean squared error. Our asymptotic results generalize directly to higher dimensions (for the variableT) provided that the functiong0is sufficiently smooth. Such smoothness conditions have often been assumed in the literature, but they impose practical limitations for the application of multivariate tensor product splines in function estimation. We also discuss the implementation of B-spline approximations based on commonly used knot selection criteria together with a simulation study of both mean and median regressions of partly linear models.
Year of publication: |
1996
|
---|---|
Authors: | He, Xuming ; Shi, Peide |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 58.1996, 2, p. 162-181
|
Publisher: |
Elsevier |
Keywords: | B-spline functions rate of convergence mean regression median regression M-estimator partly linear model regression quantile |
Saved in:
Saved in favorites
Similar items by person
-
He, Xuming, (1998)
-
Extending the Akaike information criterion to mixture regression models
Naik, Prasad A., (2007)
-
Applications of quantile regression to estimation and detection of some tail characteristics
Hsu, Ya-Hui, (2010)
- More ...