2020
DOI: 10.7717/peerj.8968
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Exploring environmental coverages of species: a new variable contribution estimation methodology for rulesets from the genetic algorithm for rule-set prediction

Abstract: Variable contribution estimation for, and determination of variable importance within, ecological niche models (ENMs) remain an important area of research with continuing challenges. Most ENM algorithms provide normally exhaustive searches through variable space; however, selecting variables to include in models is a first challenge. The estimation of the explanatory power of variables and the selection of the most appropriate variable set within models can be a second challenge. Although some ENMs incorporate… Show more

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Cited by 9 publications
(5 citation statements)
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“…(4) for higher values of . GA has been shown to be effective in solving a wide range of applications in science and engineering ( Khosravian et al, 2021 ; Zhang, 2019 ; Yang, Gomez & Blackburn, 2020 ; Katoch, Chauhan & Kumar, 2021 ; Velasco et al, 2020 ; Caro, Mendoza & Mendoza, 2021 ; Jamilla, Mendoza & Mendoza, 2021 ). For ease of use and open accessibility, the GA we implement is from the geneticalgorithm Python package, which has options for integer programming.…”
Section: Methodsmentioning
confidence: 99%
“…(4) for higher values of . GA has been shown to be effective in solving a wide range of applications in science and engineering ( Khosravian et al, 2021 ; Zhang, 2019 ; Yang, Gomez & Blackburn, 2020 ; Katoch, Chauhan & Kumar, 2021 ; Velasco et al, 2020 ; Caro, Mendoza & Mendoza, 2021 ; Jamilla, Mendoza & Mendoza, 2021 ). For ease of use and open accessibility, the GA we implement is from the geneticalgorithm Python package, which has options for integer programming.…”
Section: Methodsmentioning
confidence: 99%
“…Any GARP experiment generates multiple models and binary maps and a best subset procedure is used to select and summate the top models into a final prediction (Anderson et al 2003). We recently defined the GARP process in detail (Yang et al 2020 a ). We calculated the geographic extent of the presence of B. anthracis to generate the moderate anthrax risk surface based on the commonly used threshold of 5 out of 10 best model agreements from that final subset.…”
Section: Methodsmentioning
confidence: 99%
“…We first filtered the spatial locations of the mortality observations for each species using the ~4.5 km × 4.5 km grids (i.e., the spatial resolution of environmental layers) to avoid model overfitting [43]. For each species, we randomly generated 300, 130, and 110 pseudo-absence data within the study area of Wilson's Warbler, Barn Owl, and Common Murre, respectively (Figure S1).…”
Section: Ensemble Random Forest Modelmentioning
confidence: 99%