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Simultaneous Component and Clustering Models for Three-way Data: Within and Between Approaches

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Abstract

In this paper two techniques for units clustering and factorial dimensionality reduction of variables and occasions of a three-mode data set are discussed. These techniques can be seen as the simultaneous version of two procedures based on the sequential application of k-means and Tucker2 algorithms and vice versa. The two techniques, T3Clus and 3Fk-means, have been compared theoretically and empirically by a simulation study. In the latter, it has been noted that neither T3Clus nor 3Fk-means outperforms the other in every case. From these results rises the idea to combine the two techniques in a unique general model, named CT3Clus, having T3Clus and 3Fk-means as special cases. A simulation study follows to show the effectiveness of the proposal.

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Vichi, M., Rocci, R. & Kiers, H. Simultaneous Component and Clustering Models for Three-way Data: Within and Between Approaches. Journal of Classification 24, 71–98 (2007). https://doi.org/10.1007/s00357-007-0006-x

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  • DOI: https://doi.org/10.1007/s00357-007-0006-x

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