Multivariate column-coupled multi-block data are collected in many fields of science. Such data consist of multiple object-by-variable blocks, which all share the variable mode. To summarize the main information in such data, principal component analysis per block (separate PCAs) and simultaneous component analysis (SCA) across blocks are highly popular. The main difference is that, with separate PCAs, the loadings can differ from block to block, whereas SCA restricts the loadings to be the same across the blocks. However, one often sees that most variables have similar correlation patterns across the blocks, whereas a few variables behave differently. We consider those variables as 'non-outlying' and 'outlying' respectively. For various re...
Numerous research questions in educational sciences and psychology concern the structure of a set of...
International audienceMultiblock component methods are applied to data sets for which several blocks...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...
Multivariate multigroup data are collected in many fields of science, where the so-called groups per...
Many studies yield multivariate multiblock data, that is, multiple data blocks that all involve the ...
When confronted with multivariate multiblock data (i.e., data in which the observations are nested w...
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...
Simultaneous component analysis (SCA) is a fruitful approach to disclose the structure underlying da...
Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple variabl...
To explore structural differences and similarities in multivariate multiblock data (e.g., a number o...
Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple vari-ab...
Numerous research questions in educational sciences and psychology concern the structure of a set of...
International audienceMultiblock component methods are applied to data sets for which several blocks...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...
Multivariate multigroup data are collected in many fields of science, where the so-called groups per...
Many studies yield multivariate multiblock data, that is, multiple data blocks that all involve the ...
When confronted with multivariate multiblock data (i.e., data in which the observations are nested w...
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...
Simultaneous component analysis (SCA) is a fruitful approach to disclose the structure underlying da...
Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple variabl...
To explore structural differences and similarities in multivariate multiblock data (e.g., a number o...
Given multivariate multiblock data (e.g., subjects nested in groups are measured on multiple vari-ab...
Numerous research questions in educational sciences and psychology concern the structure of a set of...
International audienceMultiblock component methods are applied to data sets for which several blocks...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...