The present paper discusses several methods for (simultaneous) component analysis of scores of two or more groups of individuals on the same variables. Some existing methods are discussed, and a new method (SCA-S) is developed for simultaneous component analysis in such a way that for each set essentially the same component structure is found (SCA-S). This method is compared to alternative methods for analysing such data which employ the same component weights matrix (SCA-W) or the same pattern matrix (SCA-P) across data sets. Among these methods, SCA-W always explains the highest amount of variance, SCA-S the lowest, and SCA-P takes the position in between. These explained variances can be compared to the amount of variance explained by se...
Simultaneous component analysis (SCA) is a fruitful approach to disclose the structure underlying da...
In many fields of research, so-called 'multiblock' data are collected, i.e., data containing multiva...
A standard approach to derive underlying components from two or more data matrices, holding data fro...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...
This paper presents a clusterwise simultaneous component analysis for tracing structural differences...
Many studies yield multivariate multiblock data, that is, multiple data blocks that all involve the ...
Several methods have been developed for the analysis of a mixture of qualitative and quantitative va...
Numerous research questions in educational sciences and psychology concern the structure of a set of...
The interpretation of a principal component analysis can be complicated because the components are l...
Abstract: When several data sets are available that refer to the same variables, and all are summari...
Often data are collected that consist of different blocks that all contain information about the sam...
When confronted with multivariate multiblock data (i.e., data in which the observations are nested w...
When confronted with multivariate multiblock data (i.e., data in which the observations are nested w...
In many fields of research, so-called ‘multiblock’ data are collected, i.e., data containing multiva...
In many areas of science, research questions imply the analysis of a set of coupled data blocks, wit...
Simultaneous component analysis (SCA) is a fruitful approach to disclose the structure underlying da...
In many fields of research, so-called 'multiblock' data are collected, i.e., data containing multiva...
A standard approach to derive underlying components from two or more data matrices, holding data fro...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...
This paper presents a clusterwise simultaneous component analysis for tracing structural differences...
Many studies yield multivariate multiblock data, that is, multiple data blocks that all involve the ...
Several methods have been developed for the analysis of a mixture of qualitative and quantitative va...
Numerous research questions in educational sciences and psychology concern the structure of a set of...
The interpretation of a principal component analysis can be complicated because the components are l...
Abstract: When several data sets are available that refer to the same variables, and all are summari...
Often data are collected that consist of different blocks that all contain information about the sam...
When confronted with multivariate multiblock data (i.e., data in which the observations are nested w...
When confronted with multivariate multiblock data (i.e., data in which the observations are nested w...
In many fields of research, so-called ‘multiblock’ data are collected, i.e., data containing multiva...
In many areas of science, research questions imply the analysis of a set of coupled data blocks, wit...
Simultaneous component analysis (SCA) is a fruitful approach to disclose the structure underlying da...
In many fields of research, so-called 'multiblock' data are collected, i.e., data containing multiva...
A standard approach to derive underlying components from two or more data matrices, holding data fro...