Correspondence analysis, spectral clustering and graph embedding: applications to ecology and economic complexity

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作者
Alje van Dam
Mark Dekker
Ignacio Morales-Castilla
Miguel Á. Rodríguez
David Wichmann
Mara Baudena
机构
[1] Utrecht University,Copernicus Institute of Sustainable Development
[2] Utrecht University,Centre for Complex Systems Studies
[3] Utrecht University,Department of Information and Computing Sciences
[4] University of Alcalá,GloCEE
[5] Utrecht University,Global Change Ecology and Evolution Group, Department of Life Sciences
[6] Institute of Atmospheric Sciences and Climate (CNR-ISAC),Institute for Marine and Atmospheric Research Utrecht
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Identifying structure underlying high-dimensional data is a common challenge across scientific disciplines. We revisit correspondence analysis (CA), a classical method revealing such structures, from a network perspective. We present the poorly-known equivalence of CA to spectral clustering and graph-embedding techniques. We point out a number of complementary interpretations of CA results, other than its traditional interpretation as an ordination technique. These interpretations relate to the structure of the underlying networks. We then discuss an empirical example drawn from ecology, where we apply CA to the global distribution of Carnivora species to show how both the clustering and ordination interpretation can be used to find gradients in clustered data. In the second empirical example, we revisit the economic complexity index as an application of correspondence analysis, and use the different interpretations of the method to shed new light on the empirical results within this literature.
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