Community ecology in the age of multivariate multiscale spatial analysis

Stéphane Dray(Université Claude Bernard Lyon 1), Raphaël Pélissier(UMR Botanique et Modélisation de l’Architecture des Plantes et des végétations), Pierre Couteron(UMR Botanique et Modélisation de l’Architecture des Plantes et des végétations), Marie‐Josée Fortin(University of Toronto), Pierre Legendre(Université de Montréal), Pedro R. Peres‐Neto(Université du Québec à Montréal), Edwige Bellier(Biostatistique et processus spatiaux), Roger Bivand(Norwegian School of Economics), F. Guillaume Blanchet(University of Alberta), Miquel De Cáceres(Forest Science and Technology Centre of Catalonia), Anne‐Béatrice Dufour(Université Claude Bernard Lyon 1), Einar Heegaard, Thibaut Jombart(Université Claude Bernard Lyon 1), François Munoz(UMR Botanique et Modélisation de l’Architecture des Plantes et des végétations), Jari Oksanen(University of Oulu), Jean Thioulouse(Université Claude Bernard Lyon 1), Helene H. Wagner(University of Toronto)
Ecological Monographs
March 14, 2012
Cited by 676Open Access
Full Text

Abstract

Species spatial distributions are the result of population demography, behavioral traits, and species interactions in spatially heterogeneous environmental conditions. Hence the composition of species assemblages is an integrative response variable, and its variability can be explained by the complex interplay among several structuring factors. The thorough analysis of spatial variation in species assemblages may help infer processes shaping ecological communities. We suggest that ecological studies would benefit from the combined use of the classical statistical models of community composition data, such as constrained or unconstrained multivariate analyses of site‐by‐species abundance tables, with rapidly emerging and diversifying methods of spatial pattern analysis. Doing so allows one to deal with spatially explicit ecological models of beta diversity in a biogeographic context through the multiscale analysis of spatial patterns in original species data tables, including spatial characterization of fitted or residual variation from environmental models. We summarize here the recent progress for specifying spatial features through spatial weighting matrices and spatial eigenfunctions in order to define spatially constrained or scale‐explicit multivariate analyses. Through a worked example on tropical tree communities, we also show the potential of the overall approach to identify significant residual spatial patterns that could arise from the omission of important unmeasured explanatory variables or processes.


Related Papers

No related papers found

Powered by citation graph analysis