Background Many methods of spatial smoothing have been developed, for both point data as well as areal data. In Bayesian spatial models, this is achieved by purposefully designed prior(s) or smoothing functions which smooth estimates towards a local or global mean. Smoothing is important for several reasons, not least of all because it increases predictive robustness and reduces uncertainty of the estimates. Despite the benefits of smoothing, this attribute is all but ignored when it comes to model selection. Traditional goodness-of-fit measures focus on model fit and model parsimony, but neglect "goodness-of-smoothing", and are therefore not necessarily good indicators of model performance. Comparing spatial models while taking into accoun...
Given the drawbacks for using geo-political areas in mapping outcomes unrelated to geo-politics, a c...
ABSTRACT. The choice of weights is a non-nested problem in most applied spatial econometric models. ...
In applications, statistical models are often restricted to what produces reasonable estimates based...
Abstract Background When analysing spatial data, it is important to account for spatial autocorrelat...
Spatial documentation is exponentially increasing given the availability of Big Data in the Internet...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
The increase in Bayesian models available for disease mapping at a small area level can pose challen...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
This thesis addressed several contemporary issues arising in the analysis of spatial data and the br...
Spatial smoothing is one of the spatial operations in GIS. It makes spatial information vague and am...
Additional file 5. Spatial representations of the spatial model parameters for synthetic data set 3
Model assessment is one of the most important aspects of statistical analysis. In geographical analy...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
Given the drawbacks for using geo-political areas in mapping outcomes unrelated to geo-politics, a c...
ABSTRACT. The choice of weights is a non-nested problem in most applied spatial econometric models. ...
In applications, statistical models are often restricted to what produces reasonable estimates based...
Abstract Background When analysing spatial data, it is important to account for spatial autocorrelat...
Spatial documentation is exponentially increasing given the availability of Big Data in the Internet...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
The increase in Bayesian models available for disease mapping at a small area level can pose challen...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
This thesis addressed several contemporary issues arising in the analysis of spatial data and the br...
Spatial smoothing is one of the spatial operations in GIS. It makes spatial information vague and am...
Additional file 5. Spatial representations of the spatial model parameters for synthetic data set 3
Model assessment is one of the most important aspects of statistical analysis. In geographical analy...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
Given the drawbacks for using geo-political areas in mapping outcomes unrelated to geo-politics, a c...
ABSTRACT. The choice of weights is a non-nested problem in most applied spatial econometric models. ...
In applications, statistical models are often restricted to what produces reasonable estimates based...