Principal Component Analysis, Second Edition
The section on non-normal data includes independent compo-nent analysis (ICA), and the section on three-mode analysis also discusses techniques for three or more groups of variables. The penultimate section ... Principal component analysis is probably the oldest and best known of the techniques of multivariate analysis. It was first introduced ...
Analysis, Component, Independent, Component analysis, Compo, Nents, Independent compo nent analysis
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