Abstract
Spatial structures may not only result from ecological interactions, they may
also play an essential functional role in organizing the interactions. Modeling spatial patterns
at multiple spatial and temporal scales is thus a crucial step to understand the functioning
of ecological communities. PCNM (principal coordinates of neighbor matrices) analysis
achieves a spectral decomposition of the spatial relationships among the sampling sites,
creating variables that correspond to all the spatial scales that can be perceived in a given
data set. The analysis then finds the scales to which a data table of interest responds. The
significant PCNM variables can be directly interpreted in terms of spatial scales, or included
in a procedure of variation decomposition with respect to spatial and environmental com-
ponents. This paper presents four applications of PCNM analysis to ecological data rep-
resenting combinations of: transect or surface data, regular or irregular sampling schemes,
univariate or multivariate data. The data sets include Amazonian ferns, tropical marine
zooplankton, chlorophyll in a marine lagoon, and oribatid mites in a peat bog. In each case,
new ecological knowledge was obtained through PCNM analysis.
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