Understanding Canonical Correlation through the General Linear Model and Principal Components |
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Authors: | Keith E. Muller |
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Affiliation: | Department of Biostatistics , University of North Carolina , Chapel Hill , NC , 27514 , USA |
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Abstract: | Canonical correlation has been little used and little understood, even by otherwise sophisticated analysts. An alternative approach to canonical correlation, based on a general linear multivariate model, is presented. Properties of principal component analysis are used to help explain the method. Standard computational methods for full rank canonical correlation, techniques for canonical correlation on component scores, and canonical correlation with less than full rank are discussed. They are seen to be essentially equivalent when the model equation for canonical correlation on component scores is presented. The two approaches to less than full rank situations are equivalent in some senses, but quite different in usefulness, depending on the application. An example dataset is analyzed in detail to help demonstrate the conclusions. |
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Keywords: | Canonical correlation General linear mode Less than full rank regression Component matching Regression on component scores |
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