Spatial data relating to non-overlapping areal units are prevalent in fields such as economics, environmental science, epidemiology and social science, and a large suite of modeling tools have been developed for analysing these data. Many utilize conditional autoregressive (CAR) priors to capture the spatial autocorrelation inherent in these data, and software packages such as CARBayes and R-INLA have been developed to make these models easily accessible to others. Such spatial data are typically available for multiple time periods, and the development of methodology for capturing temporally changing spatial dynamics is the focus of much current research. A sizeable proportion of this literature has focused on extending CAR priors to the sp...
Background: There is an expanding literature on different representations of spatial random effects ...
In this paper we detail the reformulation and rewrite of core functions in the spBayes R package. Th...
Spatio-temporal areal data can be seen as a collection of time series which are spatially correlated...
Spatial data relating to non-overlapping areal units are prevalent in fields such as economics, envi...
Spatial data relating to non-overlapping areal units are prevalent in fields such as economics, env...
Conditional autoregressive models are commonly used to represent spatial autocorrelation in data rel...
Conditional autoregressive models are commonly used to represent spatial autocorrelation in data rel...
Abstract Model-based approaches for the analysis of areal count data are commonplace in spatiotempor...
Conditional autoregressive (CAR) models are commonly used to capture spatial correlation in areal un...
Conditional autoregressive (CAR) models are commonly used to cap-ture spatial correlation in areal u...
Hierarchical Bayesian modeling of large point-referenced space-time data is increasingly becoming fe...
In the past decade conditional autoregressive modelling specifications have found considerable appli...
The entire dissertation/thesis text is included in the research.pdf file; the official abstract appe...
Description This package implements Bayesian hierarchical spatial areal unit models. In such mod-els...
Governments and statistical agencies often make available area-level data on a number of topics (mor...
Background: There is an expanding literature on different representations of spatial random effects ...
In this paper we detail the reformulation and rewrite of core functions in the spBayes R package. Th...
Spatio-temporal areal data can be seen as a collection of time series which are spatially correlated...
Spatial data relating to non-overlapping areal units are prevalent in fields such as economics, envi...
Spatial data relating to non-overlapping areal units are prevalent in fields such as economics, env...
Conditional autoregressive models are commonly used to represent spatial autocorrelation in data rel...
Conditional autoregressive models are commonly used to represent spatial autocorrelation in data rel...
Abstract Model-based approaches for the analysis of areal count data are commonplace in spatiotempor...
Conditional autoregressive (CAR) models are commonly used to capture spatial correlation in areal un...
Conditional autoregressive (CAR) models are commonly used to cap-ture spatial correlation in areal u...
Hierarchical Bayesian modeling of large point-referenced space-time data is increasingly becoming fe...
In the past decade conditional autoregressive modelling specifications have found considerable appli...
The entire dissertation/thesis text is included in the research.pdf file; the official abstract appe...
Description This package implements Bayesian hierarchical spatial areal unit models. In such mod-els...
Governments and statistical agencies often make available area-level data on a number of topics (mor...
Background: There is an expanding literature on different representations of spatial random effects ...
In this paper we detail the reformulation and rewrite of core functions in the spBayes R package. Th...
Spatio-temporal areal data can be seen as a collection of time series which are spatially correlated...