We provide a computationally and statistically efficient method for estimating the parameters of a stochastic covariance model observed on a regular spatial grid in any number of dimensions. Our proposed method, which we call the Debiased Spatial Whittle likelihood, makes important corrections to the well-known Whittle likelihood to account for large sources of bias caused by boundary effects and aliasing. We generalize the approach to flexibly allow for significant volumes of missing data including those with lower-dimensional substructure, and for irregular sampling boundaries. We build a theoretical framework under relatively weak assumptions which ensures consistency and asymptotic normality in numerous practical settings including miss...
Spatial models have been widely used in the public health set-up. In the case of continuous outcomes...
Numerical simulations recently reported in the literature have shown that the profile likelihood ass...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
The limitations of the maximum likelihood method for estimating spatial covariance parameters are: t...
Following the ideas presented in Dahlhaus (2000) and Dahlhaus and Sahm (2000) for time series, we bu...
Covariance parameter estimation of Gaussian processes is analyzed in an asymptotic frame-work. The s...
Maximum likelihood is an attractive method of estimating covariance parameters in spatial models bas...
We consider the estimation of parametric models for stationary spatial or spatio-temporal data on a ...
[[abstract]]This paper proposes a working estimating equation which is computationally easy to use f...
A simulation study is implemented to study estimators of the covariance structure of a stationary Ga...
Often in spatial regression problems, the covariates could be high-dimensional and have a non-linear...
For spatial linear models, the classical maximum-likelihood estimators of both regression coefficien...
Given a set of spatial data, often the desire is to estimate its covariance structure. For prac-tica...
Spatial models have been widely used in the public health set-up. In the case of continuous outcomes...
Numerical simulations recently reported in the literature have shown that the profile likelihood ass...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
The limitations of the maximum likelihood method for estimating spatial covariance parameters are: t...
Following the ideas presented in Dahlhaus (2000) and Dahlhaus and Sahm (2000) for time series, we bu...
Covariance parameter estimation of Gaussian processes is analyzed in an asymptotic frame-work. The s...
Maximum likelihood is an attractive method of estimating covariance parameters in spatial models bas...
We consider the estimation of parametric models for stationary spatial or spatio-temporal data on a ...
[[abstract]]This paper proposes a working estimating equation which is computationally easy to use f...
A simulation study is implemented to study estimators of the covariance structure of a stationary Ga...
Often in spatial regression problems, the covariates could be high-dimensional and have a non-linear...
For spatial linear models, the classical maximum-likelihood estimators of both regression coefficien...
Given a set of spatial data, often the desire is to estimate its covariance structure. For prac-tica...
Spatial models have been widely used in the public health set-up. In the case of continuous outcomes...
Numerical simulations recently reported in the literature have shown that the profile likelihood ass...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...