Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple vari-ables), one may be interested in the nature and number of dimensions that underlie the variables, and in differences in dimensional structure across data blocks. To this end, clusterwise simultaneous component analysis (SCA) was proposed which simultaneously clusters blocks with a similar structure and performs an SCA per cluster. However, the number of components was restricted to be the same across clusters, which is often unrealistic. In this paper, this restriction is removed. The resulting challenges with respect to model estimation and selection are resolved. Key words: multigroup data, multilevel data, principal component analysis, simul...
Social and behavioral studies more and more often yield multi-block data, which consist of novel blo...
In line with the technological developments, the current data tends to be multidimensional and high ...
Social and behavioral studies more and more often yield multi-block data, which consist of novel blo...
Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple vari-ab...
Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple variabl...
Many studies yield multivariate multiblock data, that is, multiple data blocks that all involve the ...
Numerous research questions in educational sciences and psychology concern the structure of a set of...
Behavioral researchers are often interested in the underlying structure of multivariate data. For in...
When confronted with multivariate multiblock data (i.e., data in which the observations are nested w...
To explore structural differences and similarities in multivariate multiblock data (e.g., a number o...
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...
This paper presents a clusterwise simultaneous component analysis for tracing structural differences...
Social and behavioral studies more and more often yield multi-block data, which consist of novel blo...
In line with the technological developments, the current data tends to be multidimensional and high ...
Social and behavioral studies more and more often yield multi-block data, which consist of novel blo...
Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple vari-ab...
Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple variabl...
Many studies yield multivariate multiblock data, that is, multiple data blocks that all involve the ...
Numerous research questions in educational sciences and psychology concern the structure of a set of...
Behavioral researchers are often interested in the underlying structure of multivariate data. For in...
When confronted with multivariate multiblock data (i.e., data in which the observations are nested w...
To explore structural differences and similarities in multivariate multiblock data (e.g., a number o...
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...
This paper presents a clusterwise simultaneous component analysis for tracing structural differences...
Social and behavioral studies more and more often yield multi-block data, which consist of novel blo...
In line with the technological developments, the current data tends to be multidimensional and high ...
Social and behavioral studies more and more often yield multi-block data, which consist of novel blo...