Evaluating collinearity effects on species distribution models: An approach based on virtual species simulation.

The increasing use of species distribution modeling (SDM) has raised new concerns regarding the inaccuracies, misunderstanding, and misuses of this important tool. One of those possible pitfalls - collinearity among environmental predictors - is assumed as an important source of model uncertainty, a...

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Main Authors: Paulo De Marco, Caroline Corrêa Nóbrega
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC6133275?pdf=render
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spelling doaj-fa5d2739f5234d7d867c29730a2f219f2020-11-24T21:55:53ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01139e020240310.1371/journal.pone.0202403Evaluating collinearity effects on species distribution models: An approach based on virtual species simulation.Paulo De MarcoCaroline Corrêa NóbregaThe increasing use of species distribution modeling (SDM) has raised new concerns regarding the inaccuracies, misunderstanding, and misuses of this important tool. One of those possible pitfalls - collinearity among environmental predictors - is assumed as an important source of model uncertainty, although it has not been subjected to a detailed evaluation in recent SDM studies. It is expected that collinearity will increase uncertainty in model parameters and decrease statistical power. Here we use a virtual species approach to compare models built using subsets of PCA-derived variables with models based on the original highly correlated climate variables. Moreover, we evaluated whether modelling algorithms and species data characteristics generate models with varying sensitivity to collinearity. As expected, collinearity among predictors decreases the efficiency and increases the uncertainty of species distribution models. Nevertheless, the intensity of the effect varied according to the algorithm properties: more complex procedures behaved better than simple envelope models. This may support the claim that complex models such as Maxent take advantage of existing collinearity in finding the best set of parameters. The interaction of the different factors with species characteristics (centroid and tolerance in environmental space) highlighted the importance of the so-called "idiosyncrasy in species responses" to model efficiency, but differences in prevalence may represent a better explanation. However, even models with low accuracy to predict suitability of individual cells may provide meaningful information on the estimation of range-size, a key species-trait for macroecological studies. We concluded that the use of PCA-derived variables is advised both to control the negative effects of collinearity and as a more objective solution for the problem of variable selection in studies dealing with large number of species with heterogeneous responses to environmental variables.http://europepmc.org/articles/PMC6133275?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Paulo De Marco
Caroline Corrêa Nóbrega
spellingShingle Paulo De Marco
Caroline Corrêa Nóbrega
Evaluating collinearity effects on species distribution models: An approach based on virtual species simulation.
PLoS ONE
author_facet Paulo De Marco
Caroline Corrêa Nóbrega
author_sort Paulo De Marco
title Evaluating collinearity effects on species distribution models: An approach based on virtual species simulation.
title_short Evaluating collinearity effects on species distribution models: An approach based on virtual species simulation.
title_full Evaluating collinearity effects on species distribution models: An approach based on virtual species simulation.
title_fullStr Evaluating collinearity effects on species distribution models: An approach based on virtual species simulation.
title_full_unstemmed Evaluating collinearity effects on species distribution models: An approach based on virtual species simulation.
title_sort evaluating collinearity effects on species distribution models: an approach based on virtual species simulation.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description The increasing use of species distribution modeling (SDM) has raised new concerns regarding the inaccuracies, misunderstanding, and misuses of this important tool. One of those possible pitfalls - collinearity among environmental predictors - is assumed as an important source of model uncertainty, although it has not been subjected to a detailed evaluation in recent SDM studies. It is expected that collinearity will increase uncertainty in model parameters and decrease statistical power. Here we use a virtual species approach to compare models built using subsets of PCA-derived variables with models based on the original highly correlated climate variables. Moreover, we evaluated whether modelling algorithms and species data characteristics generate models with varying sensitivity to collinearity. As expected, collinearity among predictors decreases the efficiency and increases the uncertainty of species distribution models. Nevertheless, the intensity of the effect varied according to the algorithm properties: more complex procedures behaved better than simple envelope models. This may support the claim that complex models such as Maxent take advantage of existing collinearity in finding the best set of parameters. The interaction of the different factors with species characteristics (centroid and tolerance in environmental space) highlighted the importance of the so-called "idiosyncrasy in species responses" to model efficiency, but differences in prevalence may represent a better explanation. However, even models with low accuracy to predict suitability of individual cells may provide meaningful information on the estimation of range-size, a key species-trait for macroecological studies. We concluded that the use of PCA-derived variables is advised both to control the negative effects of collinearity and as a more objective solution for the problem of variable selection in studies dealing with large number of species with heterogeneous responses to environmental variables.
url http://europepmc.org/articles/PMC6133275?pdf=render
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