2020 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim Maximum likelihood estimation of the model parameters for a spatial population based on data collected from a survey sample is usually straightforward when sampling and non-response are both non-informative, since the model can then usually be fitted using the available sample data, and no allowance is necessary for the fact that only a part of the population has been observed. Although for many regression models this naive strategy yields consistent estimates, this is not the case for some models, such as spatial auto-regressive models. In this paper, we show that for a broad class of such models, a maximum marginal likelihood approach that uses both sample and population data leads to more...
As spatial autocorrelation latent in georeferenced data increases, the amount of duplicate informati...
Abstract The (quasi-) maximum likelihood estimator (MLE) for the autoregressive parameter in a spati...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed ...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
Maximum likelihood (ML) estimation of spatial autoregressive models for large spatial data sets is w...
sampling dynamic populations in space and time. / Ecography 27: 767/775. The estimation of spatial ...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
Conditional auto-regressive (CAR) models are frequently used with spatial data. However, the likelih...
The purpose of this dissertation is to improve the applied researcher's toolbox to estimate spatial ...
Spatial Econometrics : Automatic Spatial Correlation in Linear Regression Models. The aim of this ar...
In this dissertation, the analysis of spatial data through regression is investigated. Multiple obse...
Models for small area estimation based on a random effects specification typically assume population...
This paper proposes a new spatial lag regression model which addresses global spatial autocorrelatio...
As spatial autocorrelation latent in georeferenced data increases, the amount of duplicate informati...
Abstract The (quasi-) maximum likelihood estimator (MLE) for the autoregressive parameter in a spati...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
Least squares estimation has casually been dismissed as an inconsistent estimation method for mixed ...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
Maximum likelihood (ML) estimation of spatial autoregressive models for large spatial data sets is w...
sampling dynamic populations in space and time. / Ecography 27: 767/775. The estimation of spatial ...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...
Conditional auto-regressive (CAR) models are frequently used with spatial data. However, the likelih...
The purpose of this dissertation is to improve the applied researcher's toolbox to estimate spatial ...
Spatial Econometrics : Automatic Spatial Correlation in Linear Regression Models. The aim of this ar...
In this dissertation, the analysis of spatial data through regression is investigated. Multiple obse...
Models for small area estimation based on a random effects specification typically assume population...
This paper proposes a new spatial lag regression model which addresses global spatial autocorrelatio...
As spatial autocorrelation latent in georeferenced data increases, the amount of duplicate informati...
Abstract The (quasi-) maximum likelihood estimator (MLE) for the autoregressive parameter in a spati...
The biasedness issue arising from the maximum likelihood estimation of the spatial autoregressive mo...