Tools for training, selecting, and evaluating maximum entropy (and standard logistic regression) distribution models. This package provides tools for user-controlled transformation of explanatory variables, selection of variables by nested model comparison, and flexible model evaluation and projection. It follows principles based on the maximum- likelihood interpretation of maximum entropy modeling, and uses infinitely- weighted logistic regression for model fitting. The package is described in Vollering et al. (2019; tools:::Rd_expr_doi("10.1002/ece3.5654")).
The diagram below outlines a common workflow for users of the package. Function names are in red.
Maintainer: Julien Vollering julienvollering@gmail.com
Authors:
Sabrina Mazzoni
Rune Halvorsen
Other contributors:
Steven Phillips [copyright holder]
Michael Bedward [contributor]
MIAmaxent is intended primarily for maximum entropy distribution modeling (Phillips et al., 2006; Phillips et al., 2017), and provides an alternative to the standard methodology for training, selecting, and using models. The major advantage in this alternative methodology is greater user control -- in variable transformations, in variable selection, and in model output. Comparisons also suggest that this methodology results in simpler models with equally good predictive ability, and reduces the risk of overfitting (Halvorsen et al., 2016).
The predecessor to this package is the MIA Toolbox, which is described in detail in Mazzoni et al. (2015).
Fithian, W., & Hastie, T. (2013). Finite-sample equivalence in statistical models for presence-only data. The annals of applied statistics, 7(4), 1917.
Halvorsen, R., Mazzoni, S., Bryn, A. & Bakkestuen, V. (2015) Opportunities for improved distribution modelling practice via a strict maximum likelihood interpretation of MaxEnt. Ecography, 38, 172-183.
Halvorsen, R., Mazzoni, S., Dirksen, J.W., Næsset, E., Gobakken, T. & Ohlson, M. (2016) How important are choice of model selection method and spatial autocorrelation of presence data for distribution modelling by MaxEnt? Ecological Modelling, 328, 108-118.
Mazzoni, S., Halvorsen, R. & Bakkestuen, V. (2015) MIAT: Modular R-wrappers for flexible implementation of MaxEnt distribution modelling. Ecological Informatics, 30, 215-221.
Phillips, S.J., Anderson, R.P., Dudík, M., Schapire, R.E., & Blair, M.E. (2017). Opening the black box: an open-source release of Maxent. Ecography, 40(7), 887-893.
Phillips, S.J., Anderson, R.P. & Schapire, R.E. (2006) Maximum entropy modeling of species geographic distributions. Ecological Modelling, 190, 231-259.
Vollering, J., Halvorsen, R., & Mazzoni, S. (2019) The MIAmaxent R package: Variable transformation and model selection for species distribution models. Ecology and Evolution, 9(21), 12051–12068.
Useful links: