Oversimplified models underestimate the role of local environmental filtering

Aims Fitting community assembly via trait selection (CATS) models is a useful method of estimating the relative role of environmental selection in community assembly. In the simplest version of CATS models, only linear and additive trait–environment relationships are supposed. This paper explores th...

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Bibliographic Details
Published inJournal of vegetation science Vol. 33; no. 6
Main Authors Botta‐Dukát, Zoltán, Kovács, Bence, Gyalus, Adrienn
Format Journal Article
LanguageEnglish
Published Hoboken Wiley Subscription Services, Inc 01.11.2022
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ISSN1100-9233
1654-1103
1654-1103
DOI10.1111/jvs.13154

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Summary:Aims Fitting community assembly via trait selection (CATS) models is a useful method of estimating the relative role of environmental selection in community assembly. In the simplest version of CATS models, only linear and additive trait–environment relationships are supposed. This paper explores the consequences of neglecting non‐linearity and trait interactions by analyzing simulated and field data. Location Northern Hungary, Central Europe. Methods Starting with Gaussian response curves, we discussed how more and more complex species–environment relationships can be modeled by CATS regression. Using simulated data, we calculated the bias unsatisfying linearity and additivity assumptions introduce in the estimated role of environmental filtering in community assembly. Field data collected in the forest understorey vegetation were used for illustrating the magnitude of the underestimation in a real data set. Results A non‐linear trait–environment relationship appeared even in the simplest, but realistic simulation (i.e., a Gaussian response curve). Neglecting both non‐linearity and trait interactions resulted in considerable underestimation of the strength of the trait–environment correlation. Moreover, this underestimation was stronger in the middle part of the environmental gradients, leading to a spurious pattern. Conclusion At least, a second‐order polynomial regression model (including interactions among traits) should be fitted to avoid the underestimation of the strength of environmental filtering. The community assembly via trait selection (CATS) model is a useful method of estimating the relative role of environmental selection in community assembly. We discussed how more and more complex species–environment relationships can be modeled. Neglecting both non‐linearity and trait interactions resulted in considerable underestimation of the strength of the trait–environmental correlation. We conclude that at least, a second‐order polynomial model should be fitted to avoid underestimation.
Bibliography:Co‐ordinating Editor
David Zelený
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ISSN:1100-9233
1654-1103
1654-1103
DOI:10.1111/jvs.13154