| Literature DB >> 25878127 |
Benoit Gauzens1, Elisa Thébault2, Gérard Lacroix3, Stéphane Legendre4.
Abstract
Within food webs, species can be partitioned into groups according to various criteria. Two notions have received particular attention: trophic groups (TGs), which have been used for decades in the ecological literature, and more recently, modules. The relationship between these two group concepts remains unknown in empirical food webs. While recent developments in network theory have led to efficient methods for detecting modules in food webs, the determination of TGs (groups of species that are functionally similar) is largely based on subjective expert knowledge. We develop a novel algorithm for TG detection. We apply this method to empirical food webs and show that aggregation into TGs allows for the simplification of food webs while preserving their information content. Furthermore, we reveal a two-level hierarchical structure where modules partition food webs into large bottom-top trophic pathways, whereas TGs further partition these pathways into groups of species with similar trophic connections. This provides new perspectives for the study of dynamical and functional consequences of food-web structure, bridging topological and dynamical analysis. TGs have a clear ecological meaning and are found to provide a trade-off between network complexity and information loss.Keywords: clustering method; community detection; food webs; key species; trophic groups
Mesh:
Year: 2015 PMID: 25878127 PMCID: PMC4424665 DOI: 10.1098/rsif.2014.1176
Source DB: PubMed Journal: J R Soc Interface ISSN: 1742-5662 Impact factor: 4.118