AbstractIn the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensional lattice, for d⩾2, the achievement of asymptotic efficiency under Gaussianity, and asymptotic normality more generally, with standard convergence rate, faces two obstacles. One is the “edge effect”, which worsens with increasing d. The other is the possible difficulty of computing a continuous-frequency form of Whittle estimate or a time domain Gaussian maximum likelihood estimate, due mainly to the Jacobian term. This is especially a problem in “multilateral” models, which are naturally expressed in terms of lagged values in both directions for one or more of the d dimensions. An extension of the discrete-frequency Whittle estima...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
We consider a time series X = {Xk, k ∈ Z} with memory parameter d0 ∈ R. This time series is either s...
The local Whittle (or Gaussian semiparametric) estimator of long range depen-dence, proposed by Küns...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
We consider the estimation of parametric models for stationary spatial or spatio-temporal data on a ...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
AbstractIn the estimation of parametric models for stationary spatial or spatio-temporal data on a d...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
Following the ideas presented in Dahlhaus (2000) and Dahlhaus and Sahm (2000) for time series, we bu...
Moving from univariate to bivariate jointly dependent long-memory time series introduces a phase par...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
Maximum likelihood estimation of a spatial model typically requires a sizeable computational capacit...
In many areas of the agriculture, biological, physical and social sciences, spatial lattice data are...
Asymptotic properties of the local Whittle estimator in the nonstationary case (d \u3e 1/2) are expl...
We consider a time series X=Xk, k∈ℤ with memory parameter d0∈ℝ. This time series is either stationar...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
We consider a time series X = {Xk, k ∈ Z} with memory parameter d0 ∈ R. This time series is either s...
The local Whittle (or Gaussian semiparametric) estimator of long range depen-dence, proposed by Küns...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
We consider the estimation of parametric models for stationary spatial or spatio-temporal data on a ...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
AbstractIn the estimation of parametric models for stationary spatial or spatio-temporal data on a d...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
Following the ideas presented in Dahlhaus (2000) and Dahlhaus and Sahm (2000) for time series, we bu...
Moving from univariate to bivariate jointly dependent long-memory time series introduces a phase par...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
Maximum likelihood estimation of a spatial model typically requires a sizeable computational capacit...
In many areas of the agriculture, biological, physical and social sciences, spatial lattice data are...
Asymptotic properties of the local Whittle estimator in the nonstationary case (d \u3e 1/2) are expl...
We consider a time series X=Xk, k∈ℤ with memory parameter d0∈ℝ. This time series is either stationar...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
We consider a time series X = {Xk, k ∈ Z} with memory parameter d0 ∈ R. This time series is either s...
The local Whittle (or Gaussian semiparametric) estimator of long range depen-dence, proposed by Küns...