Optimal Smoothing in Single-Index Models
Hardle, Wolfgang ; Hall, Peter ; Ichimura, Hidehiko
Ann. Statist., Tome 21 (1993) no. 1, p. 157-178 / Harvested from Project Euclid
Single-index models generalize linear regression. They have applications to a variety of fields, such as discrete choice analysis in econometrics and dose response models in biometrics, where high-dimensional regression models are often employed. Single-index models are similar to the first step of projection pursuit regression, a dimension-reduction method. In both cases the orientation vector can be estimated root-n consistently, even if the unknown univariate function (or nonparametric link function) is assumed to come from a large smoothness class. However, as we show in the present paper, the similarities end there. In particular, the amount of smoothing necessary for root-n consistent orientation estimation is very different in the two cases. We suggest a simple, empirical rule for selecting the bandwidth appropriate to single-index models. This rule is studies in a small simulation study and an application in binary response models.
Publié le : 1993-03-14
Classification:  Bandwidth,  heteroscedastic,  kernel estimator,  projection pursuit,  regression,  single index model,  smoothing,  62H99,  62H05
@article{1176349020,
     author = {Hardle, Wolfgang and Hall, Peter and Ichimura, Hidehiko},
     title = {Optimal Smoothing in Single-Index Models},
     journal = {Ann. Statist.},
     volume = {21},
     number = {1},
     year = {1993},
     pages = { 157-178},
     language = {en},
     url = {http://dml.mathdoc.fr/item/1176349020}
}
Hardle, Wolfgang; Hall, Peter; Ichimura, Hidehiko. Optimal Smoothing in Single-Index Models. Ann. Statist., Tome 21 (1993) no. 1, pp.  157-178. http://gdmltest.u-ga.fr/item/1176349020/