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Measuring individual-level trait diversity: a critical assessment of methods

Authors :
Olusoji, Oluwafemi D.
Barabas, György
Spaak, Jurg W.
Fontana, Simone
Neyens, Thomas
De Laender, Frederik
Aerts, Marc
Olusoji, Oluwafemi D.
Barabas, György
Spaak, Jurg W.
Fontana, Simone
Neyens, Thomas
De Laender, Frederik
Aerts, Marc
Publication Year :
2023

Abstract

Individual-level trait diversity has been identified as an essential component of trait diversity (TD), influencing community assembly and structure. Traditionally, one employs trait diversity indices to measure facets of individual-level trait diversity (divergence, richness and evenness). However, the application of species-level trait diversity indices to individual-level traits data and their implications have not been adequately studied. Thus, we examined the possible challenges of using four commonly used multi-trait TD indices: Raos quadratic entropy (Rao), functional dispersion (FDis), functional evenness (FEve) and functional richness (FRic); two indices primarily developed to measure individual-level trait diversity: trait evenness distribution (TED-for evenness) and trait onion peeling (TOP-for richnness); and a modified version of TED (TEDM-for evenness). Additionally, we considered an index that integrates both evenness and richness by generalizing ordinary Hill indices for traits (coined HIT). We measured individual-level trait diversity with these indices using simulated traits data and experimental data from a growth experiment with cyanobacteria. Comparing the observed trends from the indices with the expected trends, we observed that only the trait divergence indices (FDis and Rao) produced the expected trends in the simulation scenarios and experimental data. TED and TEDM are not robust against the number of individuals used, and FEve is not sensitive to some changes in the location of individuals in the trait space. Also, TOP proved to be a discontinuous function dependent on the number of individuals, and FRic did not produce the anticipated trend when changes in the trait space did not affect the edges of the trait space. HIT did produce the anticipated changes, but it was only reliable when many individuals were sampled. In summary, applying these individual-level trait diversity indices to quantify anything except trait divergence may lead to<br />Funding Agencies|Hasselt University; Universite de Namur; Special Research Funds Concerted Research Action (ARC) [18/23-095]; Internal Funds KU Leuven [3M190682]

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1387003273
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1111.oik.09178