International audienceThis work is intended as a contribution to a wavelet-based adaptive estimator of the memory parameter in the classical semi-parametric framework for Gaussian stationary processes. In particular we introduce and develop the choice of a data-driven optimal bandwidth. Moreover, we establish a central limit theorem for the estimator of the memory parameter with the minimax rate of convergence (up to a logarithm factor). The quality of the estimators are attested by simulations
We consider a time series X = {Xk, k ∈ Z} with memory parameter d0 ∈ R. This time series is either s...
In this paper, we show that the adaptive multidimensional increment ratio estimator of the long rang...
International audienceIn numerous applications data are observed at random times and an estimated gr...
International audienceThis work is intended as a contribution to a wavelet-based adaptive estimator ...
We consider a time series X=Xk, k∈ℤ with memory parameter d0∈ℝ. This time series is either stationar...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2012.htmlDocuments de travail du...
International audienceThis paper is first devoted to study an adaptive wavelet based estimator of th...
We consider stationary processes with long memory which are non-Gaussian and represented as Hermite ...
We consider linear processes, not necessarily Gaussian, with long, short or negative memory. The mem...
This study is devoted to the use of wavelets in two different fields, constructions of bases on the ...
In this paper, we study the problem of adaptive estimation of the spectral density of a stationary G...
We fit a class of semiparametric models to a nonstationary process. This class is parametrized by a ...
In this paper we perform a Monte Carlo study based on three well-known semiparametric estimates for ...
International audienceFrom a wavelet analysis, one derives a nonparametrical estimator for the spect...
Long memory, also called long range dependence (LRD), is commonly detected in the analysis of real-l...
We consider a time series X = {Xk, k ∈ Z} with memory parameter d0 ∈ R. This time series is either s...
In this paper, we show that the adaptive multidimensional increment ratio estimator of the long rang...
International audienceIn numerous applications data are observed at random times and an estimated gr...
International audienceThis work is intended as a contribution to a wavelet-based adaptive estimator ...
We consider a time series X=Xk, k∈ℤ with memory parameter d0∈ℝ. This time series is either stationar...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2012.htmlDocuments de travail du...
International audienceThis paper is first devoted to study an adaptive wavelet based estimator of th...
We consider stationary processes with long memory which are non-Gaussian and represented as Hermite ...
We consider linear processes, not necessarily Gaussian, with long, short or negative memory. The mem...
This study is devoted to the use of wavelets in two different fields, constructions of bases on the ...
In this paper, we study the problem of adaptive estimation of the spectral density of a stationary G...
We fit a class of semiparametric models to a nonstationary process. This class is parametrized by a ...
In this paper we perform a Monte Carlo study based on three well-known semiparametric estimates for ...
International audienceFrom a wavelet analysis, one derives a nonparametrical estimator for the spect...
Long memory, also called long range dependence (LRD), is commonly detected in the analysis of real-l...
We consider a time series X = {Xk, k ∈ Z} with memory parameter d0 ∈ R. This time series is either s...
In this paper, we show that the adaptive multidimensional increment ratio estimator of the long rang...
International audienceIn numerous applications data are observed at random times and an estimated gr...