Abstract

MEPS Marine Ecology Progress Series Contact the journal Facebook Twitter RSS Mailing List Subscribe to our mailing list via Mailchimp HomeLatest VolumeAbout the JournalEditorsTheme Sections MEPS 436:17-28 (2011) - DOI: https://doi.org/10.3354/meps09240 Predicting trophic guild and diet overlap from functional traits: statistics, opportunities and limitations for marine ecology C. Albouy1,2,*, F. Guilhaumon1,3,5, S. Villéger1, M. Mouchet1, L. Mercier1, J. M. Culioli4, J. A. Tomasini1, F. Le Loc’h2, D. Mouillot1,6 1Univ Montpellier 2 CC 093, UMR 5119, CNRS-UM2-IRD-IFREMER-UM1 ECOSYM, 34095 Montpellier, France 2IRD, UMR 212 EME, IRD IFREMER UMII, avenue Jean Monnet 34203 Sète cedex, BP 171, France 3’CITA-A (Azorean Biodiversity Group), Terra-Cha, Angra do Heroıismo, 9700-851, Terceira, Azores, Portugal 4Office de l’Environement de Corse, Reserve Naturelle des Bouches de Bonifacio, 20250 Corte, France 5’Rui Nabeiro’ Biodiversity Chair, CIBIO - Universidade de Évora. Casa Cordovil, Rua Dr. Joaquim Henrique da Fonseca, 7000-890 Évora, Portugal 6ARC Centre of Excellence for Coral Reef Studies, James Cook University, Townsville, Queensland 4811, Australia *Email: albouycamille@gmail.com ABSTRACT: Fish diets provide information that can be used to explore and model complex ecosystems, and infer resource partitioning among species. The exhaustive sampling of prey items captured by each species remains, however, a demanding task. Therefore, predicting diets from other variables, such as functional traits, may be a valuable method. Here, we attempted to predict trophic guild and diet overlap for 35 fish species using 13 ecomorphological traits related to feeding ecology. We compared linear discriminant analysis and random forest (RF) classifiers in their ability to predict trophic guild. We used generalized dissimilarity modelling to predict diet overlap from functional distances between species pairs. All models were evaluated using the same cross-validation procedure. We found that fish trophic guilds were accurately predicted by an RF classifier, even with a limited number of traits, when no more than 7 guilds were defined. Prediction was no longer accurate when finer trophic guilds were created (8 or more guilds), whatever the combination of traits. Furthermore, predicting the degree of diet dissimilarity between species pairs, based on their ecomorphological traits dissimilarities, was profoundly unreliable (at least 76% of unexplained variation). These results suggest that we can predict fish trophic guilds accurately from ecomorphological traits, but not diet overlap and resource partitioning because of inherent versatility in fish diets. More generally, our statistical framework may be applied to any kind of marine organism for which feeding strategies need to be determined from traits. KEY WORDS: Generalized dissimilarity modeling · Mediterranean · Fish · Non-linear model · Random forest · Versatility Full text in pdf format Supplementary material PreviousNextCite this article as: Albouy C, Guilhaumon F, Villéger S, Mouchet M and others (2011) Predicting trophic guild and diet overlap from functional traits: statistics, opportunities and limitations for marine ecology. Mar Ecol Prog Ser 436:17-28. https://doi.org/10.3354/meps09240 Export citation RSS - Facebook - Tweet - linkedIn Cited by Published in MEPS Vol. 436. Online publication date: August 31, 2011 Print ISSN: 0171-8630; Online ISSN: 1616-1599 Copyright © 2011 Inter-Research.

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