Convenient model fitting using (iterated) INLA.
inlabru
facilitates Bayesian spatial modeling using integrated nested Laplace approximations. It
is heavily based on R-inla (http://www.r-inla.org) but adds additional modeling abilities.
Tutorials and more information can be found at http://www.inlabru.org/.
The main function for inference using inlabru is bru. For point process inference lgcp is
a good starting point. The package comes with multiple real world data sets, namely gorillas,
mexdolphin, seals. Plotting these data sets is straight forward using inlabru's extensions
to ggplot2
, e.g. the gg function. For educational purposes some simulated data sets are available
as well, e.g. Poisson1_1D, Poisson2_1D, Poisson2_1D and toygroups.