hSDM R Package 
hSDM is an R package for estimating parameters of hierarchical
Bayesian species distribution models. Such models allow interpreting the
observations (occurrence and abundance of a species) as a result of
several hierarchical processes including ecological processes (habitat
suitability, spatial dependence and anthropogenic disturbance) and
observation processes (species detectability). Hierarchical species
distribution models are essential for accurately characterizing the
environmental response of species, predicting their probability of
occurrence, and assessing uncertainty in the model results.
Installation
Install the latest stable version of hSDM from
CRAN with:
install.packages("hSDM")Or install the development version of hSDM from
GitHub with:
devtools::install_github("ghislainv/hSDM")Vignettes and manual
- Presentation at ISEC 2014: hSDM-ISEC2014.pdf
- Long vignette with several examples: hSDM-vignette.pdf
- Manual: hSDM-manual.pdf
In the wild
- Tutorial on using opportunistic species occurrence data for occupancy modelling by Adam M. Wilson on GitHub.
- Tutorial by Adam M. Wilson adapted by Marta A. Jarzyna on spatial-ecology.net
- Tutorial on modelling spatial autocorrelation by Jérôme Guélat on Amazonaws.
Related publications
Diez J. M. and Pulliam H. R. 2007. Hierarchical analysis of species distributions and abundance across environmental gradients. Ecology. 88(12): 3144-3152.
Gelfand A. E., Silander J. A., Wu S. S., Latimer A., Lewis P. O., Rebelo A. G. and Holder M. 2006. Explaining species distribution patterns through hierarchical modeling. Bayesian Analysis. 1(1): 41-92.
Latimer, A. M.; Wu, S. S.; Gelfand, A. E. & Silander, J. A. 2006. Building statistical models to analyze species distributions. Ecological Applications. 16(1): 33-50.
MacKenzie, D. I.; Nichols, J. D.; Lachman, G. B.; Droege, S.; Andrew Royle, J. and Langtimm, C. A. 2002. Estimating site occupancy rates when detection probabilities are less than one. Ecology. 83: 2248-2255.
Royle, J. A. 2004. N-mixture models for estimating population size from spatially replicated counts. Biometrics. 60: 108-115.