How to make more out of community data? A conceptual framework and its implementation as models and software

Otso Ovaskainen(University of Helsinki), Gleb Tikhonov(University of Helsinki), Anna Norberg(University of Helsinki), F. Guillaume Blanchet(Université de Sherbrooke), Leo L. Duan(Duke University), David B. Dunson(Duke University), Tomas Roslin(Swedish University of Agricultural Sciences), Nerea Abrego(University of Helsinki)
Ecology Letters
March 20, 2017
Cited by 1,011Open Access
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Abstract

Community ecology aims to understand what factors determine the assembly and dynamics of species assemblages at different spatiotemporal scales. To facilitate the integration between conceptual and statistical approaches in community ecology, we propose Hierarchical Modelling of Species Communities (HMSC) as a general, flexible framework for modern analysis of community data. While non-manipulative data allow for only correlative and not causal inference, this framework facilitates the formulation of data-driven hypotheses regarding the processes that structure communities. We model environmental filtering by variation and covariation in the responses of individual species to the characteristics of their environment, with potential contingencies on species traits and phylogenetic relationships. We capture biotic assembly rules by species-to-species association matrices, which may be estimated at multiple spatial or temporal scales. We operationalise the HMSC framework as a hierarchical Bayesian joint species distribution model, and implement it as R- and Matlab-packages which enable computationally efficient analyses of large data sets. Armed with this tool, community ecologists can make sense of many types of data, including spatially explicit data and time-series data. We illustrate the use of this framework through a series of diverse ecological examples.


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