Uniqueness of three-mode factor models with sparse cores: The 3x3x3 case

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Abstract

Three-Mode Factor Analysis (3MFA) and PARAFAC are methods to describe three-way data. Both methods employ models with components for the three modes of a three-way array; the 3MFA model also uses a three-way core array for linking all components to each other. The use of the core array makes the 3MFA model more general than the PARAFAC model (thus allowing a better fit), but also more complicated. Moreover, in the 3MFA model the components are not uniquely determined, and it seems hard to choose among all Possible solutions. A particularly interesting feature of the PARAFAC model is that it does give unique components. The present paper introduces a class of 3MFA models in between 3MFA and PARAFAC that share the good properties of the 3MFA model and the PARAFAC model: They fit (almost) as well as the 3MFA model, they are relatively simple and they have the same uniqueness properties as the PARAFAC model.

Original languageEnglish
Pages (from-to)349-374
Number of pages26
JournalPsychometrika
Volume62
Issue number3
DOIs
Publication statusPublished - Sept-1997

Keywords

  • three-way methods
  • PARAFAC
  • RANK

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