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2012
DOI: 10.1890/11-1183.1
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Community ecology in the age of multivariate multiscale spatial analysis

Abstract: HOW TO CITE TSPACE ITEMSAlways cite the published version, so the author(s) will receive recognition through services that track citation counts, e.g. Scopus. If you need to cite the page number of the TSpace version (original manuscript or accepted manuscript) because you cannot access the published version, then cite the TSpace version in addition to the published version using the permanent URI (handle) found on the record page. Abstract. Species spatial distributions are the result of population demography… Show more

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Cited by 634 publications
(587 citation statements)
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References 123 publications
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“…For comparison of community structures of the different sites we subsequently used the percentage difference dissimilarity matrix (Bray). We finally checked that the resulting dissimilarity matrix was euclidic (Dray et al 2017). The resulting dissimilarity matrix was used for all further analyses.…”
Section: Resultsmentioning
confidence: 99%
“…For comparison of community structures of the different sites we subsequently used the percentage difference dissimilarity matrix (Bray). We finally checked that the resulting dissimilarity matrix was euclidic (Dray et al 2017). The resulting dissimilarity matrix was used for all further analyses.…”
Section: Resultsmentioning
confidence: 99%
“…The analysis was applied in three steps, following the approach and notation outlined in Dray et al. (2012). In brief, utilizing “adespatial” (Dray et al., 2016) and associated R packages, analysis was conducted of: Y , a principle component analysis (PCA) of trait genetic values as a multivariate response; F , a multivariate multiple regression (redundancy analysis) of climatic and landscape explanatory variables on Y ; and R , a partial residual analysis (a modified form of PCA) of the remaining variation, after partialling out the effects of climatic and landscape variables.…”
Section: Methodsmentioning
confidence: 99%
“…DbMEMs represent a spectral decomposition of the spatial relationships, producing orthogonal eigenvectors which were used to represent spatial relationships among regions. The first eigenvectors usually described broad spatial structures, encompassing the spatial variation in the whole study area, while the last eigenvectors (with lower eigenvalues) describe fine spatial structures (Dray et al, 2012). DbMEM eigenvectors were computed using the R function pcnm in vegan from a truncated geodesic distance matrix between region centroids obtained with R package fields (Furrer et al, 2011).…”
Section: Predictors Of Species Compositionmentioning
confidence: 99%