Three-mode analysis of multimode covariance matrices

Multimode covariance matrices, such as multitrait‐multimethod matrices, contain the covariances of subject scores on variables for different occasions or conditions. This paper presents a comparison of three‐mode component analysis and three‐mode factor analysis applied to such covariance matrices....

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Bibliographic Details
Published inBritish journal of mathematical & statistical psychology Vol. 56; no. 2; pp. 305 - 335
Main Authors Kroonenberg, Pieter M., Oort, Frans J.
Format Journal Article
LanguageEnglish
Published Oxford, UK Blackwell Publishing Ltd 01.11.2003
British Psychological Society
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ISSN0007-1102
2044-8317
DOI10.1348/000711003770480066

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Summary:Multimode covariance matrices, such as multitrait‐multimethod matrices, contain the covariances of subject scores on variables for different occasions or conditions. This paper presents a comparison of three‐mode component analysis and three‐mode factor analysis applied to such covariance matrices. The differences and similarities between the non‐stochastic and stochastic approaches are demonstrated by two examples, one of which has a longitudinal design. The empirical comparison is facilitated by deriving, as a heuristic device, a statistic based on the maximum likelihood function for three‐mode factor analysis and its associated degrees of freedom for the three‐mode component models. Furthermore, within the present context a case is made for interpreting the core array as second‐order components.
Bibliography:ark:/67375/WNG-3JG1TG6R-X
ArticleID:BMSP116
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ISSN:0007-1102
2044-8317
DOI:10.1348/000711003770480066