A covariance function estimate of a zero-mean nonstationary random process in discrete time is accomplished from one observed realization by weighting observations with a kernel function. Several kernel functions have been proposed in the literature. In this paper, we prove that the mean square error (MSE) optimal kernel function for any parameterized family of random processes can be computed as the solution to a system of linear equations. Even though the resulting kernel is optimized for members of the chosen family, it seems to be robust in the sense that it is often close to optimal for many other random processes as well. We also investigate a few examples of families, including a family of locally stationary processes, nonstationary ...
AbstractIn this paper, kernel function methods are considered for estimating the intensity function ...
We deal with the problem of mean square optimal estimation of linear functionals which depend on the...
Random processes with almost periodic covariance function are considered from a spectral outlook. Gi...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
The ambiguity domain plays a central role in estimating the time-varying spectrum of a non-stationar...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
We propose a model selection approach for covariance estimation of a multi-dimensional stochastic pr...
This paper treats estimation of the Wigner-Ville spectrum (WVS) of Gaussian continuous-time stochast...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
AbstractA multivariate point process is a random jump measure in time and space. Its distribution is...
AbstractA multivariate point process is a random jump measure in time and space. Its distribution is...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
In this paper, kernel function methods are considered for estimating the intensity function of a non...
Godambe's (1985) theorem on optimal estimating equations for stochastic processes is applied to nonp...
AbstractIn this paper, kernel function methods are considered for estimating the intensity function ...
We deal with the problem of mean square optimal estimation of linear functionals which depend on the...
Random processes with almost periodic covariance function are considered from a spectral outlook. Gi...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
The ambiguity domain plays a central role in estimating the time-varying spectrum of a non-stationar...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
We propose a model selection approach for covariance estimation of a multi-dimensional stochastic pr...
This paper treats estimation of the Wigner-Ville spectrum (WVS) of Gaussian continuous-time stochast...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
AbstractA multivariate point process is a random jump measure in time and space. Its distribution is...
AbstractA multivariate point process is a random jump measure in time and space. Its distribution is...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
In this paper, kernel function methods are considered for estimating the intensity function of a non...
Godambe's (1985) theorem on optimal estimating equations for stochastic processes is applied to nonp...
AbstractIn this paper, kernel function methods are considered for estimating the intensity function ...
We deal with the problem of mean square optimal estimation of linear functionals which depend on the...
Random processes with almost periodic covariance function are considered from a spectral outlook. Gi...