The application of Markov random field models to problems involving spatial data on lattice systems requires decisions regarding a number of important aspects of model structure. Existing exploratory techniques appropriate for spatial data do not provide direct guidance to an investigator about these decisions. We introduce an exploratory quantity that is directly tied to the structure of Markov random field models based on one parameter exponential family conditional distributions. This exploratory diagnostic is shown to be a meaningful statistic that can inform decisions involved in modeling spatial structure with statistical dependence terms. In this article, we develop the diagnostic, show that it has stable statistical behavior, illust...
Spatial autoregressive models typically rely on the assumption that the spatial dependence structure...
Conditional autoregressive (CAR) models, and the more general Markov random field models, are excell...
This paper describes the modelling and fitting of Gaussian Markov random field spatial components wi...
This thesis deals with how computationally effective lattice models could be used for inference of d...
The class of Markov random field models known as auto-models provides a flexible and highly-interpre...
Disregarding spatial dependence can invalidate methods for analyzingcross-sectional and panel data. ...
A multivariate Markov random field (MRF) model can be an appealing approach to an analysis of spatia...
In many scientific disciplines, there is frequently a need to describe purely spatial interactions a...
In many areas of the agriculture, biological, physical and social sciences, spatial lattice data are...
In the analysis of spatial phenomena closely related to the local context, the probabilistic model ...
This research deals with some methods for modeling and analyzing spatially dependent ordered categor...
This paper proposes a generalized framework to analyze spatial count data under a unilateral regular...
This thesis addresses issues in the econometric analysis of data observed over regular or irregular ...
A powerful modelling tool for spatial data is the framework of Gaussian Markov random fields (GMRFs)...
An approach to incorporate spatial dependence into Stochastic Frontier analysis is developed and app...
Spatial autoregressive models typically rely on the assumption that the spatial dependence structure...
Conditional autoregressive (CAR) models, and the more general Markov random field models, are excell...
This paper describes the modelling and fitting of Gaussian Markov random field spatial components wi...
This thesis deals with how computationally effective lattice models could be used for inference of d...
The class of Markov random field models known as auto-models provides a flexible and highly-interpre...
Disregarding spatial dependence can invalidate methods for analyzingcross-sectional and panel data. ...
A multivariate Markov random field (MRF) model can be an appealing approach to an analysis of spatia...
In many scientific disciplines, there is frequently a need to describe purely spatial interactions a...
In many areas of the agriculture, biological, physical and social sciences, spatial lattice data are...
In the analysis of spatial phenomena closely related to the local context, the probabilistic model ...
This research deals with some methods for modeling and analyzing spatially dependent ordered categor...
This paper proposes a generalized framework to analyze spatial count data under a unilateral regular...
This thesis addresses issues in the econometric analysis of data observed over regular or irregular ...
A powerful modelling tool for spatial data is the framework of Gaussian Markov random fields (GMRFs)...
An approach to incorporate spatial dependence into Stochastic Frontier analysis is developed and app...
Spatial autoregressive models typically rely on the assumption that the spatial dependence structure...
Conditional autoregressive (CAR) models, and the more general Markov random field models, are excell...
This paper describes the modelling and fitting of Gaussian Markov random field spatial components wi...