Spatial data analysis has become more and more important in the studies of ecology and economics during the last decade. One focus of spatial data analysis is how to select predictors, variance functions and correlation functions. However, in general, the true covariance function is unknown and the working covariance structure is often misspecified. In this paper, our target is to find a good strategy to identify the best model from the candidate set using model selection criteria. This paper is to evaluate the ability of some information criteria (corrected Akaike information criterion, Bayesian information criterion (BIC) and residual information criterion (RIC)) for choosing the optimal model when the working correlation function, the wo...
Abstract: The problem of variable selection is encountered in model fitting with unobserved spatial ...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
<p>We used spatial error models to identify the most important factors (environment or history) for ...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
We consider the problem of model selection for geospatial data. Spatial correlation is often ignored...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
The problem of simultaneous covariate selection and parameter inference for spatial regression model...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
The problem of simultaneous covariate selection and parameter inference for spatial regression model...
In this study, we consider Bayesian methods for the estimation of a sample selection model with spat...
International audienceThis work focuses on variable selection for spatial regression models, with lo...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
A health outcome can be observed at a spatial location and we wish to relate this to a set of enviro...
This paper continues from the discussion of Florax et al. (Florax, R., H. Folmer and S. Rey, 2003. S...
This dissertation consists of three papers written on the design and analysis of experiments in the ...
Abstract: The problem of variable selection is encountered in model fitting with unobserved spatial ...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
<p>We used spatial error models to identify the most important factors (environment or history) for ...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
We consider the problem of model selection for geospatial data. Spatial correlation is often ignored...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
The problem of simultaneous covariate selection and parameter inference for spatial regression model...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
The problem of simultaneous covariate selection and parameter inference for spatial regression model...
In this study, we consider Bayesian methods for the estimation of a sample selection model with spat...
International audienceThis work focuses on variable selection for spatial regression models, with lo...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
A health outcome can be observed at a spatial location and we wish to relate this to a set of enviro...
This paper continues from the discussion of Florax et al. (Florax, R., H. Folmer and S. Rey, 2003. S...
This dissertation consists of three papers written on the design and analysis of experiments in the ...
Abstract: The problem of variable selection is encountered in model fitting with unobserved spatial ...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
<p>We used spatial error models to identify the most important factors (environment or history) for ...