Adaptive Deconvolution on the Nonnegative Real Line
In this paper we consider the problem of adaptive density or survival function estimation in an additive model de ned by Z = X + Y with X independent of Y , when both random variables are nonnegative. We want to recover the distribution of X (density or survival function) through n observations of Z, assuming that the distribution of Y is known. This issue can be seen as the classical statistical problem of deconvolution which has been tackled in many cases using Fourier-type approaches. Nonetheless, in the present case the random variables have the particularity to be R+ supported. Knowing that, we propose a new angle of attack by building a projection estimator with an appropriate Laguerre basis. We present upper bounds on the mean squared integrated risk of our density and survival function estimators. We then describe a nonparametric adaptive strategy for selecting a relevant projection space. The procedures are illustrated with simulated data and compared to the performances of more classical deconvolution setting using a Fourier approach.
Year of publication: |
2014-10
|
---|---|
Authors: | Mabon, Gwennaëlle |
Institutions: | Centre de Recherche en Économie et Statistique (CREST), Groupe des Écoles Nationales d'Économie et Statistique (GENES) |
Keywords: | Inverse problem. Adaptive estimation. Nonparametric density estimation. Survival function estimation. Laguerre basis. Deconvolution. Mean squared risk |
Saved in:
Saved in favorites
Similar items by person
-
Estimation of Convolution In The Model with Noise
Chesneau, Christophe, (2014)
-
Adaptive Estimation of Random-Effects Densities In Linear Mixed-Effects Model
Mabon, Gwennaëlle, (2014)
-
Adaptive density estimation in deconvolution problems with unknown error distribution
Kappus, Johanna, (2013)
- More ...