Three-Mode Factor Analysis by Means of Candecomp/Parafac
A three-mode covariance matrix contains covariances of N observations (e.g., subject scores) on J variables for K different occasions or conditions. We model such an JK×JK covariance matrix as the sum of a (common) covariance matrix having Candecomp/Parafac form, and a diagonal matrix of unique variances. The Candecomp/Parafac form is a generalization of the two-mode case under the assumption of parallel factors. We estimate the unique variances by Minimum Rank Factor Analysis. The factors can be chosen oblique or orthogonal. Our approach yields a model that is easy to estimate and easy to interpret. Moreover, the unique variances, the factor covariance matrix, and the communalities are guaranteed to be proper, a percentage of explained common variance can be obtained for each variable-condition combination, and the estimated model is rotationally unique under mild conditions. We apply our model to several datasets in the literature, and demonstrate our estimation procedure in a simulation study. Copyright The Psychometric Society 2014
Year of publication: |
2014
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Authors: | Stegeman, Alwin ; Lam, Tam |
Published in: |
Psychometrika. - Springer. - Vol. 79.2014, 3, p. 426-443
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Publisher: |
Springer |
Subject: | three-mode factor analysis | multitrait-multimethod | Candecomp | Parafac | minimum rank factor analysis |
Saved in:
Online Resource