Single-index modeling is widely applied in,for example,econometric
studies as a compromise between too restrictive parametric models and flexible
but hardly estimable purely nonparametric models. By such modeling the
statistical analysis usually focuses on estimating the index coefficients. The
average derivative estimator (ADE) of the index vector is based on the fact
that the average gradient of a single index function $f(x^{\top}\beta)$ is
proportional to the index vector $\beta$. Unfortunately,a straightforward
application of this idea meets the so-called “curse of
dimensionality” problem if the dimensionality $d$ of the model is larger
than 2. However, prior information about the vector $\beta$ can be used for
improving the quality of gradient estimation by extending the weighting kernel
in a direction of small directional derivative. The method proposed in this
paper consists of such iterative improvements of the original ADE. The whole
procedure requires at most 2 $\log n$ iterations and the resulting estimator is
$\sqrt{n}$-consistent under relatively mild assumptions on the model
independently of the dimensionality $d$.
Publié le : 2001-06-14
Classification:
Single-index model,
index coefficients,
direct estimation,
iteration,
62G05,
62H40,
2G20
@article{1009210682,
author = {Hristache, Marian and Juditsky, Anatoli and Spokoiny, Vladimir},
title = {Direct estimation of the index coefficient in a single-index
model},
journal = {Ann. Statist.},
volume = {29},
number = {2},
year = {2001},
pages = { 593-623},
language = {en},
url = {http://dml.mathdoc.fr/item/1009210682}
}
Hristache, Marian; Juditsky, Anatoli; Spokoiny, Vladimir. Direct estimation of the index coefficient in a single-index
model. Ann. Statist., Tome 29 (2001) no. 2, pp. 593-623. http://gdmltest.u-ga.fr/item/1009210682/