Title of article :
Estimating the error distribution function in semiparametric additive regression models
Author/Authors :
Müller، نويسنده , , Ursula U. and Schick، نويسنده , , Anton and Wefelmeyer، نويسنده , , Wolfgang، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
We consider semiparametric additive regression models with a linear parametric part and a nonparametric part, both involving multivariate covariates. For the nonparametric part we assume two models. In the first, the regression function is unspecified and smooth; in the second, the regression function is additive with smooth components. Depending on the model, the regression curve is estimated by suitable least squares methods. The resulting residual-based empirical distribution function is shown to differ from the error-based empirical distribution function by an additive expression, up to a uniformly negligible remainder term. This result implies a functional central limit theorem for the residual-based empirical distribution function. It is used to test for normal errors.
Keywords :
Test for normal errors , Hِlder space , Partly linear regression model , Uniform Bahadur representation , Orthogonal series estimator , Local polynomial smoother , Nonparametric additive regression , Martingale transform test
Journal title :
Journal of Statistical Planning and Inference
Journal title :
Journal of Statistical Planning and Inference