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Anisotropic adaptive kernel deconvolution

F. ComteC. Lacour — 2013

Annales de l'I.H.P. Probabilités et statistiques

In this paper, we consider a multidimensional convolution model for which we provide adaptive anisotropic kernel estimators of a signal density f measured with additive error. For this, we generalize Fan’s ( (3) (1991) 1257–1272) estimators to multidimensional setting and use a bandwidth selection device in the spirit of Goldenshluger and Lepski’s ( (3) (2011) 1608–1632) proposal for density estimation without noise. We consider first the pointwise setting and then,...

Model selection for (auto-)regression with dependent data

Yannick BaraudF. ComteG. Viennet — 2001

ESAIM: Probability and Statistics

In this paper, we study the problem of non parametric estimation of an unknown regression function from dependent data with sub-gaussian errors. As a particular case, we handle the autoregressive framework. For this purpose, we consider a collection of finite dimensional linear spaces (e.g. linear spaces spanned by wavelets or piecewise polynomials on a possibly irregular grid) and we estimate the regression function by a least-squares estimator built on a data driven selected linear space among...

Adaptive estimation of the conditional intensity of marker-dependent counting processes

F. ComteS. GaïffasA. Guilloux — 2011

Annales de l'I.H.P. Probabilités et statistiques

We propose in this work an original estimator of the conditional intensity of a marker-dependent counting process, that is, a counting process with covariates. We use model selection methods and provide a nonasymptotic bound for the risk of our estimator on a compact set. We show that our estimator reaches automatically a convergence rate over a functional class with a given (unknown) anisotropic regularity. Then, we prove a lower bound which establishes that this rate is optimal. Lastly, we provide...

Nonparametric adaptive estimation for pure jump Lévy processes

F. ComteV. Genon-Catalot — 2010

Annales de l'I.H.P. Probabilités et statistiques

This paper is concerned with nonparametric estimation of the Lévy density of a pure jump Lévy process. The sample path is observed at discrete instants with fixed sampling interval. We construct a collection of estimators obtained by deconvolution methods and deduced from appropriate estimators of the characteristic function and its first derivative. We obtain a bound for the -risk, under general assumptions on the model. Then we propose a penalty function that allows to build an adaptive estimator....

Model selection for (auto-)regression with dependent data

Yannick BaraudF. ComteG. Viennet — 2010

ESAIM: Probability and Statistics

In this paper, we study the problem of non parametric estimation of an unknown regression function from dependent data with sub-Gaussian errors. As a particular case, we handle the autoregressive framework. For this purpose, we consider a collection of finite dimensional linear spaces ( linear spaces spanned by wavelets or piecewise polynomials on a possibly irregular grid) and we estimate the regression function by a least-squares estimator built on a data driven selected linear space among the...

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