This research was funded by EPSRC grants EP/K041061/1, EP/K041053/1, and EP/K041053/2.1. Spatial processes are central to many ecological processes, but fitting models that incorporate spatial correlation to data from ecological surveys is computationally challenging. This is particularly true of point pattern data (in which the primary data are the locations at which target species are found), but also true of gridded data, and of georeferenced samples from continuous spatial fields. 2. We describe here the R package inlabru that builds on the widely-used R-INLA package to provide easier access to Bayesian inference from spatial point process, spatial count, gridded, and georeferenced data, using integrated nested Laplace approximation (...
Within this paper spatial and spatio-temporal disease mapping models are reviewed and applied to rep...
The ever-growing popularity of citizen science, as well as recent technological and digital developm...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
1. Spatial processes are central to many ecological processes, but fitting models that incorporate ...
1. Spatial processes are central to many ecological processes, but fitting models that incorporate s...
The principles behind the interface to continuous domain spatial models in the RINLA software packag...
Summary1. We highlight an emerging statistical method, integrated nested Laplace approximation (INLA...
Our understanding of a biological population can be greatly enhanced by modelling their distribution...
Statistical approaches for inferring the spatial distribution of taxa (Species Distribution Models, ...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
Occupancy modeling is a common approach to assess spatial and temporal species distribution patterns...
Spatial and spatio-temporal disease mapping models are widely used for the analysis of registry data...
Spatial capture–recapture (SCR) is now routinely used for estimating abundance and density of wildli...
"The authors also gratefully acknowledge the financial support of Research Councils UK for Illian"Th...
Within this paper spatial and spatio-temporal disease mapping models are reviewed and applied to rep...
The ever-growing popularity of citizen science, as well as recent technological and digital developm...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
1. Spatial processes are central to many ecological processes, but fitting models that incorporate ...
1. Spatial processes are central to many ecological processes, but fitting models that incorporate s...
The principles behind the interface to continuous domain spatial models in the RINLA software packag...
Summary1. We highlight an emerging statistical method, integrated nested Laplace approximation (INLA...
Our understanding of a biological population can be greatly enhanced by modelling their distribution...
Statistical approaches for inferring the spatial distribution of taxa (Species Distribution Models, ...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
Occupancy modeling is a common approach to assess spatial and temporal species distribution patterns...
Spatial and spatio-temporal disease mapping models are widely used for the analysis of registry data...
Spatial capture–recapture (SCR) is now routinely used for estimating abundance and density of wildli...
"The authors also gratefully acknowledge the financial support of Research Councils UK for Illian"Th...
Within this paper spatial and spatio-temporal disease mapping models are reviewed and applied to rep...
The ever-growing popularity of citizen science, as well as recent technological and digital developm...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...