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dc.contributor.author Kim, Daehyun
dc.contributor.author DeWitt, Thomas
dc.contributor.author Costa, César Serra Bonifácio
dc.contributor.author Kupfer, John Andrew
dc.contributor.author McEwan, Ryan W.
dc.contributor.author Stallins, Jon Anthony
dc.date.accessioned 2015-11-17T16:01:25Z
dc.date.available 2015-11-17T16:01:25Z
dc.date.issued 2015
dc.identifier.citation KIM, Daehyun et al. Beyond bivariate correlations: three-block partial least squares illustrated with vegetation, soil, and topography. Ecosphere, v. 6, n. 8, p. 1-32, 2015. Disponível em: <http://www.esajournals.org/doi/10.1890/ES15-0074.1>. Acesso em: 14 nov. 2015. pt_BR
dc.identifier.issn 2150-8925
dc.identifier.uri http://repositorio.furg.br/handle/1/5561
dc.description.abstract Ecologists, particularly those engaged in biogeomorphic studies, often seek to connect data from three or more domains. Using three-block partial least squares regression, we present a procedure to quantify and define bi-variance and tri-variance of data blocks related to plant communities, their soil parameters, and topography. Bi-variance indicates the total amount of covariation between these three domains taken in pairs, whereas tri-variance refers to the common variance shared by all domains. We characterized relationships among three domains (plant communities, soil properties, topography) for a salt marsh, four coastal dunes, and two temperate forests spanning several regions in the world. We defined the specific bi- and tri-variances for the ecological systems we included in this study and addressed larger questions about how these variances scale with each other looking at generalities across systems. We show that a system tends to exhibit high bi-variance and tri-variance (tight coupling among domains) when subjected to the effects of frequent and widespread (i.e., broadly acting) hydrogeomorphic disturbance. When major disturbance events are uncommon, bi-variance and tri-variance decrease, because the formation of vegetation, soil, and topographic patterns is primarily localized, and the couplings of these properties diverge over space, contingent upon site-specific disturbance history and/or fine-grained environmental heterogeneity. We also demonstrate that the bi-variance and tri-variance of a whole system are not consistently either greater or smaller than those of the associated sub-zones. This point implies that the overall correlation structure among vegetation, soil, and topography is conserved across spatial scales. This paper addresses a critical aspect of ecology: the conceptual and analytical integration of data across multiple domains. By example, we show that bi-variances and tri-variances provide useful insight into how the strength of couplings among vegetation, soil, and topography data blocks varies across scales and disturbance regimes. Though we describe the simplest case of multi-variance beyond the usual two-block linear statistical model, this approach can be extended to any number of data domains, making integration tractable and more supportive of holistic inferences pt_BR
dc.language.iso eng pt_BR
dc.rights open access pt_BR
dc.subject Biogeomorphology pt_BR
dc.subject Disturbance pt_BR
dc.subject Ecosystem engineer pt_BR
dc.subject Feedback pt_BR
dc.subject Historical contingency pt_BR
dc.subject Multicollinearity pt_BR
dc.subject Scale invariance pt_BR
dc.subject Three-block partial least squares pt_BR
dc.subject Variance pt_BR
dc.title Beyond bivariate correlations: three-block partial least squares illustrated with vegetation, soil, and topography pt_BR
dc.type article pt_BR
dc.identifier.doi 10.1890/ES15-0074.1 pt_BR


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