Optimal smoothing in semiparametric index approximation of regression functions
The problem of approximating a general regression function m(x) = E (Y IX = x) is addressed. As in the case of the c1assical L2-type projection pursuit regression considered by Hall (1989), we propose to approximate m(x) through a regression of Y given an index, that is a unidimensional projection of X. The orientation vector defining the projection of X is taken to be the optimum of a Kullback-Leibler type criterion. The first step of the c1assical projection pursuit regression and the single-index models (SIM) are obtained as particular cases. We define a kernel-based estimator of the 'optimal' orientation vector and we suggest a simple empirical bandwidth selection rule. Finally, the true regression function m(•) is approximated through a kernel regression of Y given the estimated index. Our procedure extends the idea of Härdle, Hall and Ichimura (1993) which propose, in the case of SIM, to minimize an empirical L2-type criterion simultaneously with respect to the orientation vector and the bandwidth. We show that a same bandwidth of order n - 1/5 can be used for the root-n estimation of the orientation and for the kernel approximation of the true regression function. Our methodology could be extended to more accurate multi-index approximations.
Year of publication: |
2000
|
---|---|
Authors: | Delecroix, Michel ; Hristache, Marian ; Patilea, Valentin |
Institutions: | Sonderforschungsbereich 373, Quantifikation und Simulation ökonomischer Prozesse, Wirtschaftswissenschaftliche Fakultät |
Saved in:
Saved in favorites
Similar items by person
-
Efficient estimation in single-index regression
Delecroix, Michel, (1997)
-
Optimal smoothing in semiparametric index approximation of regression functions
Delecroix, Michel, (2000)
-
On Semiparametric estimation in Single-Index Regression
Delecroix, Michel, (2004)
- More ...