International audienceThe nonparametric estimation of density and regression function based on functional stationary processes using wavelet bases for Hilbert spaces of functions is investigated in this paper. The mean integrated square error over adapted decomposition spaces is given. To obtain the asymptotic properties of wavelet density and regression estimators, the Martingale method is used. These results are obtained under some mild conditions on the model; aside from ergodicity, no other assumptions are imposed on the data. This paper extends the scope of some previous results for wavelet density and regression estimators by relaxing the independence or the mixing condition to the ergodicity. Potential applications include the condit...
The estimation of a multivariate function from a stationary m-dependent process is investigated, wit...
The problem of generalized nonparametric function estimation has received considerable attention ove...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
International audienceThe nonparametric estimation of density and regression function based on funct...
The nonparametric estimation of density and regression function based on functional stationary proce...
International audienceIn this study, we look at the wavelet basis for nonparametric estimation of de...
This paper deals with density and regression estimation problems for functional data. Using wavelet ...
Abstract: This paper deals with the density and regression estima-tion problems for functional data....
This paper deals with density and regression estimation problems for functional data. Using wavelet ...
In this research, we explore the applications of wavelet theory in nonparametric regression and dens...
In this paper we give the main uses of wavelets in statistics, with emphasis in time series analysis...
We consider the problem of estimation of the density function for functional data with values in a c...
A new methodology for the application of wavelets in non-parametric density estimation is proposed. ...
A new methodology for the application of wavelets in non-parametric density estimation is proposed. ...
A new methodology for the application of wavelets in non-parametric density estimation is proposed. ...
The estimation of a multivariate function from a stationary m-dependent process is investigated, wit...
The problem of generalized nonparametric function estimation has received considerable attention ove...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
International audienceThe nonparametric estimation of density and regression function based on funct...
The nonparametric estimation of density and regression function based on functional stationary proce...
International audienceIn this study, we look at the wavelet basis for nonparametric estimation of de...
This paper deals with density and regression estimation problems for functional data. Using wavelet ...
Abstract: This paper deals with the density and regression estima-tion problems for functional data....
This paper deals with density and regression estimation problems for functional data. Using wavelet ...
In this research, we explore the applications of wavelet theory in nonparametric regression and dens...
In this paper we give the main uses of wavelets in statistics, with emphasis in time series analysis...
We consider the problem of estimation of the density function for functional data with values in a c...
A new methodology for the application of wavelets in non-parametric density estimation is proposed. ...
A new methodology for the application of wavelets in non-parametric density estimation is proposed. ...
A new methodology for the application of wavelets in non-parametric density estimation is proposed. ...
The estimation of a multivariate function from a stationary m-dependent process is investigated, wit...
The problem of generalized nonparametric function estimation has received considerable attention ove...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...