AbstractIn this paper, the spectral density estimation of a nonstationary class of stochastic processes is investigated. Although these processes are not stationary with respect to the additive binary operation, i.e., in the classical weak sense, they are stationary with respect to the multiplicative binary operation. These processes exist naturally as continuous-time processes. In order to answer many questions in practical situations using these processes, we develop a random sampling method for estimating their spectral densities by using a discrete-time process. Some simulation results are given
International audienceAn approach to the spectral estimation for some classes of non-stationary rand...
International audienceIn numerous applications data are observed at random times and an estimated gr...
International audienceIn numerous applications data are observed at random times and an estimated gr...
AbstractIn this paper, the spectral density estimation of a nonstationary class of stochastic proces...
AbstractLet X = {X(t), − ∞ < t < ∞} be a continuous-time stationary process with spectral density fu...
A spectral density matrix estimator for stationary stochastic vector processes is studied. As the du...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
AbstractThis paper considers statistical inference for nonstationary Gaussian processes with long-ra...
Spectral analysis of stationary processes has played an essential role in the development of Time Se...
We consider a stationary symmetric stable bidimensional process with discrete time, having the spect...
This paper considers statistical inference for nonstationary Gaussian processes with long-range depe...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
Most physical systems operate in continuous time. However, to interact with such systems one needs t...
International audienceAn approach to the spectral estimation for some classes of non-stationary rand...
International audienceIn numerous applications data are observed at random times and an estimated gr...
International audienceIn numerous applications data are observed at random times and an estimated gr...
AbstractIn this paper, the spectral density estimation of a nonstationary class of stochastic proces...
AbstractLet X = {X(t), − ∞ < t < ∞} be a continuous-time stationary process with spectral density fu...
A spectral density matrix estimator for stationary stochastic vector processes is studied. As the du...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
AbstractThis paper considers statistical inference for nonstationary Gaussian processes with long-ra...
Spectral analysis of stationary processes has played an essential role in the development of Time Se...
We consider a stationary symmetric stable bidimensional process with discrete time, having the spect...
This paper considers statistical inference for nonstationary Gaussian processes with long-range depe...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
Most physical systems operate in continuous time. However, to interact with such systems one needs t...
International audienceAn approach to the spectral estimation for some classes of non-stationary rand...
International audienceIn numerous applications data are observed at random times and an estimated gr...
International audienceIn numerous applications data are observed at random times and an estimated gr...