English

Finite sample penalization in adaptive density deconvolution

Statistics Theory 2008-02-11 v1 Statistics Theory

Abstract

We consider the problem of estimating the density gg of identically distributed variables X_iX\_i, from a sample Z_1,...,Z_nZ\_1, ..., Z\_n where Z_i=X_i+σϵ_iZ\_i=X\_i+\sigma\epsilon\_i, i=1,...,ni=1, ..., n and σϵ_i\sigma \epsilon\_i is a noise independent of X_iX\_i with known density σ1f_ϵ(./σ) \sigma^{-1}f\_\epsilon(./\sigma). We generalize adaptive estimators, constructed by a model selection procedure, described in Comte et al. (2005). We study numerically their properties in various contexts and we test their robustness. Comparisons are made with respect to deconvolution kernel estimators, misspecification of errors, dependency,... It appears that our estimation algorithm, based on a fast procedure, performs very well in all contexts.

Keywords

Cite

@article{arxiv.math/0601098,
  title  = {Finite sample penalization in adaptive density deconvolution},
  author = {Fabienne Comte and Yves Rozenholc and Marie-Luce Taupin},
  journal= {arXiv preprint arXiv:math/0601098},
  year   = {2008}
}