2016
DOI: 10.1016/j.jtbi.2016.03.043
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Predicting stochastic community dynamics in grasslands under the assumption of competitive symmetry

Abstract: Community dynamics is influenced by multiple ecological processes such as environmental spatiotemporal variation, competition between individuals and demographic stochasticity. Quantifying the respective influence of these various processes and making predictions on community dynamics require the use of a dynamical framework encompassing these various components. We here demonstrate how to adapt the framework of stochastic community dynamics to the peculiarities of herbaceous communities, by using a short temp… Show more

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Cited by 31 publications
(8 citation statements)
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“…Plot level trait divergence occurred particularly at high elevations, presumably indicating spatial partitioning rather than limiting similarity as the underlying mechanism. Our findings suggest that approaches studying and modelling assembly processes, such as stacked species distribution models (Dubuis et al, 2011) or mechanistic models of community assembly (DeMalach, Zaady, Weiner, Kadmon, & Cahill, 2016;Lohier, Jabot, Weigelt, Schmid, & Deffuant, 2016;Shipley, Vile, & Garnier, 2006), should consider the interaction of biotic and abiotic factors along environmental gradients, particularly when examining communities at fine spatial scales. Furthermore, the detection of spatial partitioning in this study calls for high-resolution abiotic data to allow understanding and forecasting of community and biodiversity patterns at fine scales.…”
Section: Con Clus Ionsmentioning
confidence: 98%
“…Plot level trait divergence occurred particularly at high elevations, presumably indicating spatial partitioning rather than limiting similarity as the underlying mechanism. Our findings suggest that approaches studying and modelling assembly processes, such as stacked species distribution models (Dubuis et al, 2011) or mechanistic models of community assembly (DeMalach, Zaady, Weiner, Kadmon, & Cahill, 2016;Lohier, Jabot, Weigelt, Schmid, & Deffuant, 2016;Shipley, Vile, & Garnier, 2006), should consider the interaction of biotic and abiotic factors along environmental gradients, particularly when examining communities at fine spatial scales. Furthermore, the detection of spatial partitioning in this study calls for high-resolution abiotic data to allow understanding and forecasting of community and biodiversity patterns at fine scales.…”
Section: Con Clus Ionsmentioning
confidence: 98%
“…Very importantly, the parameterized model could also be used to account for transient dynamics (P10) and to make predictions, so far largely unattained aims in large‐scale community ecology. Examples of such mechanistic models exist already (Cazelles, Mouquet, Mouillot, & Gravel, 2016; Kalyuzhny, Kadmon, & Shnerb, 2015; Lohier, Jabot, Weigelt, Schmid, & Deffuant, 2016), but many processes and process combinations are still understudied in this young research field (Cabral et al, 2017). Interestingly, the development and application of such mechanistic models in community ecology will benefit greatly from the solutions outlined here (S1–S4) because these provide a range of partly independent diversity patterns (e.g., trait versus phylogenetic patterns, abundance weighted patterns, small versus large‐scale patterns), an indispensable requisite for inverse parameterization (Grimm et al, 1996).…”
Section: Solutionsmentioning
confidence: 99%
“…Besides, the importance of ecological drift (i.e. random temporal changes in species abundances) is poorly documented in grasslands (but see Martorell & Freckleton, 2014; Lohier et al, 2016) and only at inter‐annual time scales, not on shorter seasonal scales. Beyond the study of dispersal, drift and environmental filtering processes in isolation, the relative role of these three processes on fine spatial (within grasslands) and temporal (within season) community dynamics still requires more attention (Pinto et al, 2014; Bittebiere et al, 2020).…”
Section: Introductionmentioning
confidence: 99%
“…The magnitude of ecological drift at intra‐annual time scales has not been studied to our knowledge. Analyses at inter‐annual time scales of an experimentally sown grassland have demonstrated a limited impact of ecological drift compared to environmental filtering (Lohier et al, 2016). Besides, the magnitude of ecological drift decreases with the size of the community (Lande et al, 2003), which is not expected to strongly vary between mowing and grazing treatments.…”
Section: Introductionmentioning
confidence: 99%
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