CPCA: A program for principal component analysis with external information on subjects and variables |
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Authors: | Michael A. Hunter Yoshio Takane |
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Affiliation: | 1. Department of Psychology, University of Victoria, P. O. Box 3050, V8W 3P5, Victoria, BC, Canada 2. McGill University, Montreal, Quebec, Canada
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Abstract: | A program is described for principal component analysis with external information on subjects and variables. This method is calledconstrained principal component analysis (CPCA), in which regression analysis and principal component analysis are combined into a unified framework that allows a full exploration of data structures both within and outside known information on subjects and variables. Many existing methods are special cases of CPCA, and the program can be used for multivariate multiple regression, redundancy analysis, double redundancy analysis, dual scaling with external criteria, vector preference models, and GMANOVA (growth curve models). |
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