Algorithms and biplots for double constrained correspondence analysis

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Abstract

Correspondence analysis with linear external constraints on both the rows and the columns has been mentioned in the ecological literature, but lacks full mathematical treatment and easily available algorithms and software. This paper fills this gap by defining the method as maximizing the fourth-corner correlation between linear combinations, by providing novel algorithms, which demonstrate relationships with related methods, and by making a detailed study of possible biplots and associated approximations. The method is illustrated using ecological data on the abundances of species in sites and where the species are characterized by traits and sites by environmental variables. The trait data and environment data form the external constraints and the question is which traits and environmental variables are associated, how these associations drive species abundances and how they can be displayed in biplots. With microbiome data becoming widely available, these and related multivariate methods deserve more study as they might be routinely used in the future.

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ter Braak, C. J. F., Šmilauer, P., & Dray, S. (2018). Algorithms and biplots for double constrained correspondence analysis. Environmental and Ecological Statistics, 25(2), 171–197. https://doi.org/10.1007/s10651-017-0395-x

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