Millsap and Meredith (1988) have developed a generalization of principal components analysis for the simultaneous analysis of a number of variables observed in several populations or on several occasions. The algorithm they provide has some disadvantages. The present paper offers two alternating least squares algorithms for their method, suitable for small and large data sets, respectively. Lower and upper bounds are given for the loss function to be minimized in the Millsap and Meredith method. These can serve to indicate whether or not a global optimum for the simultaneous components analysis problem has been attained
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
Many of the ''classical'' multivariate data analysis and multidimensional scaling techniques call fa...
The problem of decomposing a given covariance matrix as the sum of a positive semi-definite matrix o...
Millsap and Meredith (1988) have developed a generalization of principal components analysis for the...
A standard approach to derive underlying components from two or more data matrices, holding data fro...
In many areas of science, research questions imply the analysis of a set of coupled data blocks, wit...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...
Homogeneity analysis, or multiple correspondence analysis, is usually applied tok separate variables...
Kroonenberg and de Leeuw (1980) have developed an alternating least-squares method TUCKALS-3 as a so...
The method for analyzing three-way data where one of the three components matrices in TUCKALS3 is ch...
Abstract: When several data sets are available that refer to the same variables, and all are summari...
In principal components analysis (PCA) of mixture of quantitative and qual-itative data, we require ...
This book expounds the principle and related applications of nonlinear principal component analysis ...
A constrained principal component analysis, which aims at a simultaneous clustering of objects and a...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
Many of the ''classical'' multivariate data analysis and multidimensional scaling techniques call fa...
The problem of decomposing a given covariance matrix as the sum of a positive semi-definite matrix o...
Millsap and Meredith (1988) have developed a generalization of principal components analysis for the...
A standard approach to derive underlying components from two or more data matrices, holding data fro...
In many areas of science, research questions imply the analysis of a set of coupled data blocks, wit...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...
Homogeneity analysis, or multiple correspondence analysis, is usually applied tok separate variables...
Kroonenberg and de Leeuw (1980) have developed an alternating least-squares method TUCKALS-3 as a so...
The method for analyzing three-way data where one of the three components matrices in TUCKALS3 is ch...
Abstract: When several data sets are available that refer to the same variables, and all are summari...
In principal components analysis (PCA) of mixture of quantitative and qual-itative data, we require ...
This book expounds the principle and related applications of nonlinear principal component analysis ...
A constrained principal component analysis, which aims at a simultaneous clustering of objects and a...
Many problems in statistics and machine learning can be formulated as an optimization problem of a f...
Many of the ''classical'' multivariate data analysis and multidimensional scaling techniques call fa...
The problem of decomposing a given covariance matrix as the sum of a positive semi-definite matrix o...