Multilinear analysis methods such as component (and three-way component) analysis of very large data sets can become very computationally demanding and even infeasible unless some method is used to compress the data and/or speed up the algorithms. We discuss two previously proposed speedup methods. (a) Alsberg and Kvalheim have proposed use of data simplification along with some new analysis algorithms. We show that their procedures solve the same problem as (b) the more general approach proposed (in a different context) by Carroll, Pruzansky, and Kruskal. In the latter approach, a speed improvement is attained by applying any (three-mode) PCA algorithm to a small (three-way) array derived from the original data. Hence, it can employ the ne...
The CANDECOMP algorithm for the PARAFAC analysis of n x m x p three-way arrays is adapted to handle ...
Principal components analysis (PCA) is a well-known technique for approximating a data set represent...
In behavioral research, PARAFAC analysis, a three-mode generalization of standard principal componen...
A method that indicates the numbers of components to use in fitting the three-mode principal compone...
A method that indicates the numbers of components to use in fitting the three-mode principal compone...
A modification of the TUCKALS3 algorithm is proposed that handles three-way arrays of order I x J × ...
In principal components analysis (PCA) of mixture of quantitative and qual-itative data, we require ...
Principal component analysis (PCA) is a popular method for summarizing two-mode data. The last decad...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
A number of methods for the analysis of three-way data are described and shown to be variants of pri...
The method for analyzing three-way data where one of the three components matrices in TUCKALS3 is ch...
Abstract. This study establishes the mathematical foundation for a fast incremental multilinear meth...
We introduce primed-PCA (pPCA), a two-step algorithm for speeding up the approximation of principal ...
Several three-mode principal component models can be considered for the modelling of three-way, thre...
Other publications in this series: Jacqueline Meulman, Homogeneity analysis of incomplete data. M &a...
The CANDECOMP algorithm for the PARAFAC analysis of n x m x p three-way arrays is adapted to handle ...
Principal components analysis (PCA) is a well-known technique for approximating a data set represent...
In behavioral research, PARAFAC analysis, a three-mode generalization of standard principal componen...
A method that indicates the numbers of components to use in fitting the three-mode principal compone...
A method that indicates the numbers of components to use in fitting the three-mode principal compone...
A modification of the TUCKALS3 algorithm is proposed that handles three-way arrays of order I x J × ...
In principal components analysis (PCA) of mixture of quantitative and qual-itative data, we require ...
Principal component analysis (PCA) is a popular method for summarizing two-mode data. The last decad...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
A number of methods for the analysis of three-way data are described and shown to be variants of pri...
The method for analyzing three-way data where one of the three components matrices in TUCKALS3 is ch...
Abstract. This study establishes the mathematical foundation for a fast incremental multilinear meth...
We introduce primed-PCA (pPCA), a two-step algorithm for speeding up the approximation of principal ...
Several three-mode principal component models can be considered for the modelling of three-way, thre...
Other publications in this series: Jacqueline Meulman, Homogeneity analysis of incomplete data. M &a...
The CANDECOMP algorithm for the PARAFAC analysis of n x m x p three-way arrays is adapted to handle ...
Principal components analysis (PCA) is a well-known technique for approximating a data set represent...
In behavioral research, PARAFAC analysis, a three-mode generalization of standard principal componen...