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Too many candidates: Embedded covariate selection procedure for species distribution modelling with the covsel R package.

Authors :
Adde, Antoine
Rey, Pierre-Louis
Fopp, Fabian
Petitpierre, Blaise
Schweiger, Anna K.
Broennimann, Olivier
Lehmann, Anthony
Zimmermann, Niklaus E.
Altermatt, Florian
Pellissier, Loïc
Guisan, Antoine
Source :
Ecological Informatics; Jul2023, Vol. 75, pN.PAG-N.PAG, 1p
Publication Year :
2023

Abstract

1. Selecting the best subset of covariates out of a panel of many candidates is a key and highly influential stage of the species distribution modelling process. Yet, there is currently no commonly accepted and widely adopted standard approach by which to perform this selection. 2. We introduce a two-step "embedded" covariate selection procedure aimed at optimizing the predictive ability and parsimony of species distribution models fitted in a context of high-dimensional candidate covariate space. The procedure combines a collinearity-filtering algorithm (Step A) with three model-specific embedded regularization techniques (Step B), including generalized linear model with elastic net regularization, generalized additive model with null-space penalization, and guided regularized random forest. 3. We evaluated the embedded covariate selection procedure through an example application aimed at modelling the habitat suitability of 50 species in Switzerland from a suite of 123 candidate covariates. We demonstrated the ability of the embedded covariate selection procedure to provide significantly more accurate species distribution models as compared to models obtained with alternative procedures. Model performance was independent of the characteristics of the species data, such as the number of occurrence records or their spatial distribution across the study area. 4. We implemented and streamlined our embedded covariate selection procedure in the covsel R package, paving the way for a ready-to-use, automated, covariate selection tool that was missing in the field of species distribution modelling. All the information required for installing and running the covsel R package is openly available on the GitHub repository https://github.com/N-SDM/covsel. • covariate selection is a key stage of the species distribution modelling process • we introduce covsel: an R package for automated covariate selection • covsel (Step A) applies a collinearity-filtering algorithm • covsel (Step B) applies model-specific embedded regularization techniques • covsel is openly available on GitHub (https://github.com/N-SDM/covsel) [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15749541
Volume :
75
Database :
Supplemental Index
Journal :
Ecological Informatics
Publication Type :
Academic Journal
Accession number :
164244930
Full Text :
https://doi.org/10.1016/j.ecoinf.2023.102080