Abstract
It iswell-knownthat multivariate curve estimation suffers from the curse of dimensionality.However,
reasonable estimators are possible, even in several dimensions, under appropriate restrictions on the
complexity of the curve. In the present paper we explore how much appropriate wavelet estimators
can exploit a typical restriction on the curve such as additivity. We first propose an adaptive and
simultaneous estimation procedure for all additive components in additive regression models and
discuss rate of convergence results and data-dependent truncation rules for wavelet series estimators.
To speed up computation we then introduce a wavelet version of functional ANOVA algorithm for
additive regression models and propose a regularization algorithm which guarantees an adaptive
solution to the multivariate estimation problem. Some simulations indicate that wavelets methods
complement nicely the existing methodology for nonparametric multivariate curve estimation.
Anno
2001
Tipo pubblicazione
Altri Autori
Amato U., Antoniadis A.
Editore
Chapman & Hall,
Rivista
Statistics and computing