2020
DOI: 10.1101/2020.01.30.927236
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A unified model of species abundance, genetic diversity, and functional diversity reveals the mechanisms structuring ecological communities

Abstract: Biodiversity accumulates hierarchically by means of ecological and evolutionary processes and feedbacks. Reconciling the relative importance of these processes is hindered by current theory, which tends to focus on a single spatial, temporal or taxonomic scale. We introduce a mechanistic model of community assembly, rooted in classic island biogeography theory, which makes temporally explicit joint predictions across three biodiversity data axes: i) species richness and abundances; ii) population genetic diver… Show more

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Cited by 12 publications
(40 citation statements)
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“…To explore the behavior of the proposed competition models and understand how the different models affect the outcome of community assembly, we ran 10 000 simulations for each of the five community assembly models (neutral, filtering, mean competition, pairwise competition and β-competition), with parameter ranges following Overcast et al (2021) (see Appendix A.3). We explored temporal trends in richness and abundance, genetic diversity, and trait variation using least square polynomial regressions using the polyfit function of Numpy v.19.0 (Oliphant 2006).…”
Section: Exploration Of In Silico Experimentsmentioning
confidence: 99%
See 4 more Smart Citations
“…To explore the behavior of the proposed competition models and understand how the different models affect the outcome of community assembly, we ran 10 000 simulations for each of the five community assembly models (neutral, filtering, mean competition, pairwise competition and β-competition), with parameter ranges following Overcast et al (2021) (see Appendix A.3). We explored temporal trends in richness and abundance, genetic diversity, and trait variation using least square polynomial regressions using the polyfit function of Numpy v.19.0 (Oliphant 2006).…”
Section: Exploration Of In Silico Experimentsmentioning
confidence: 99%
“…We explored temporal trends in richness and abundance, genetic diversity, and trait variation using least square polynomial regressions using the polyfit function of Numpy v.19.0 (Oliphant 2006). The temporal trends are studied in terms of Λ, a parameter used to quantify the progress of the simulation toward equilibrium (Overcast et al 2019), consistent with the original MESS model Overcast et al (2021). We visually inspected the resulting simulations by collapsing simulated summary statistics into principal components using the built-in PCA function of MESS (Overcast et al 2021).…”
Section: Exploration Of In Silico Experimentsmentioning
confidence: 99%
See 3 more Smart Citations