Bootstrap confidence regions in non-symmetrical correspondence analysis


Abstract


Non-symmetric Correspondence analysis is a method increasingly used in place of classical correspondence analysis to portray the asymmetric association of two categorical variables. In this paper we investigate the reliability of graphical displays illustrating variable prediction, by looking at inferential aspects of  the sampling variation of the configuration of points, using a bootstrap approach.


DOI Code: 10.1285/i20705948v5n3p413

Keywords: Non-symmetric Correspondence Analysis, Latent Variables, Bootstrap, Elliptical Confidence Regions, Biplot.

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