The MIAmaxent R package: Variable transformation and model selection for species distribution models

Abstract The widely used “Maxent” software for modeling species distributions from presence‐only data (Phillips et al., Ecological Modelling, 190, 2006, 231) tends to produce models with high‐predictive performance but low‐ecological interpretability, and implications of Maxent's statistical ap...

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Main Authors: Julien Vollering, Rune Halvorsen, Sabrina Mazzoni
Format: Article
Language:English
Published: Wiley 2019-11-01
Series:Ecology and Evolution
Subjects:
Online Access:https://doi.org/10.1002/ece3.5654
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spelling doaj-6c9db5d0a2a649dcaa2d9a5d89d15c302021-03-02T10:19:39ZengWileyEcology and Evolution2045-77582019-11-01921120511206810.1002/ece3.5654The MIAmaxent R package: Variable transformation and model selection for species distribution modelsJulien Vollering0Rune Halvorsen1Sabrina Mazzoni2Department of Environmental Sciences Western Norway University of Applied Sciences Sogndal NorwayDepartment of Research and Collections Natural History Museum University of Oslo Oslo NorwayDepartment of Research and Collections Natural History Museum University of Oslo Oslo NorwayAbstract The widely used “Maxent” software for modeling species distributions from presence‐only data (Phillips et al., Ecological Modelling, 190, 2006, 231) tends to produce models with high‐predictive performance but low‐ecological interpretability, and implications of Maxent's statistical approach to variable transformation, model fitting, and model selection remain underappreciated. In particular, Maxent's approach to model selection through lasso regularization has been shown to give less parsimonious distribution models—that is, models which are more complex but not necessarily predictively better—than subset selection. In this paper, we introduce the MIAmaxent R package, which provides a statistical approach to modeling species distributions similar to Maxent's, but with subset selection instead of lasso regularization. The simpler models typically produced by subset selection are ecologically more interpretable, and making distribution models more grounded in ecological theory is a fundamental motivation for using MIAmaxent. To that end, the package executes variable transformation based on expected occurrence–environment relationships and contains tools for exploring data and interrogating models in light of knowledge of the modeled system. Additionally, MIAmaxent implements two different kinds of model fitting: maximum entropy fitting for presence‐only data and logistic regression (GLM) for presence–absence data. Unlike Maxent, MIAmaxent decouples variable transformation, model fitting, and model selection, which facilitates methodological comparisons and gives the modeler greater flexibility when choosing a statistical approach to a given distribution modeling problem.https://doi.org/10.1002/ece3.5654lasso regularizationMaxentmaximum entropyspecies distribution modelingsubset selectionvariable transformation
collection DOAJ
language English
format Article
sources DOAJ
author Julien Vollering
Rune Halvorsen
Sabrina Mazzoni
spellingShingle Julien Vollering
Rune Halvorsen
Sabrina Mazzoni
The MIAmaxent R package: Variable transformation and model selection for species distribution models
Ecology and Evolution
lasso regularization
Maxent
maximum entropy
species distribution modeling
subset selection
variable transformation
author_facet Julien Vollering
Rune Halvorsen
Sabrina Mazzoni
author_sort Julien Vollering
title The MIAmaxent R package: Variable transformation and model selection for species distribution models
title_short The MIAmaxent R package: Variable transformation and model selection for species distribution models
title_full The MIAmaxent R package: Variable transformation and model selection for species distribution models
title_fullStr The MIAmaxent R package: Variable transformation and model selection for species distribution models
title_full_unstemmed The MIAmaxent R package: Variable transformation and model selection for species distribution models
title_sort miamaxent r package: variable transformation and model selection for species distribution models
publisher Wiley
series Ecology and Evolution
issn 2045-7758
publishDate 2019-11-01
description Abstract The widely used “Maxent” software for modeling species distributions from presence‐only data (Phillips et al., Ecological Modelling, 190, 2006, 231) tends to produce models with high‐predictive performance but low‐ecological interpretability, and implications of Maxent's statistical approach to variable transformation, model fitting, and model selection remain underappreciated. In particular, Maxent's approach to model selection through lasso regularization has been shown to give less parsimonious distribution models—that is, models which are more complex but not necessarily predictively better—than subset selection. In this paper, we introduce the MIAmaxent R package, which provides a statistical approach to modeling species distributions similar to Maxent's, but with subset selection instead of lasso regularization. The simpler models typically produced by subset selection are ecologically more interpretable, and making distribution models more grounded in ecological theory is a fundamental motivation for using MIAmaxent. To that end, the package executes variable transformation based on expected occurrence–environment relationships and contains tools for exploring data and interrogating models in light of knowledge of the modeled system. Additionally, MIAmaxent implements two different kinds of model fitting: maximum entropy fitting for presence‐only data and logistic regression (GLM) for presence–absence data. Unlike Maxent, MIAmaxent decouples variable transformation, model fitting, and model selection, which facilitates methodological comparisons and gives the modeler greater flexibility when choosing a statistical approach to a given distribution modeling problem.
topic lasso regularization
Maxent
maximum entropy
species distribution modeling
subset selection
variable transformation
url https://doi.org/10.1002/ece3.5654
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