We consider the problem of model selection for geospatial data. Spatial correlation is often ignored in the selection of explanatory variables and this can influence model selection results. For example, the inclusion or exclusion of particular explanatory variables may not be apparent when spatial correlation is ignored. To address this problem, we consider the Akaike Information Criterion (AIC) as applied to a geostatistical model. We offer a heuristic derivation of the AIC in this context and provide simulation results that show that using AIC for a geostatistical model is superior to the often used traditional approach of ignoring spatial correlation in the selection of explanatory variables. These ideas are further demonstrated via a m...
Abstract. Increasingly, geostatistical procedures have been used for analysis and for attribute mode...
This paper continues from the discussion of Florax et al. (Florax, R., H. Folmer and S. Rey, 2003. S...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...
The problem of simultaneous covariate selection and parameter inference for spatial regression model...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
The problem of simultaneous covariate selection and parameter inference for spatial regression model...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
Geostatistics is concerned with estimation and prediction problems for spatially continuous phenomen...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
[[abstract]]In many fields of science, predicting variables of interest over a study region based on...
When modeling species distributions, a common problem is a lack of independence in sampling values o...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Abstract. Increasingly, geostatistical procedures have been used for analysis and for attribute mode...
This paper continues from the discussion of Florax et al. (Florax, R., H. Folmer and S. Rey, 2003. S...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...
The problem of simultaneous covariate selection and parameter inference for spatial regression model...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
The problem of simultaneous covariate selection and parameter inference for spatial regression model...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
Geostatistics is concerned with estimation and prediction problems for spatially continuous phenomen...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
[[abstract]]In many fields of science, predicting variables of interest over a study region based on...
When modeling species distributions, a common problem is a lack of independence in sampling values o...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Abstract. Increasingly, geostatistical procedures have been used for analysis and for attribute mode...
This paper continues from the discussion of Florax et al. (Florax, R., H. Folmer and S. Rey, 2003. S...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...