A problem often occurring in exploratory data analysis is how to summarize large numbers of variables in terms of a smaller number of dimensions. When the variables are quantitative, one may resort to Principal Components Analysis (PCA). When qualitative (categorical) variables are involved, one may choose from a variety of methods which are adaptations of PCA, designed for this purpose. This book is about such adapted PCA methods for qualitative variables, and for mixtures of qualitative and quantitative variables. Part I treats adapted PCA methods, like Multiple Correspondence Analysis (MCA), in retrospect. The methods are systematized such that the choice between the different methods is facilitated. In order to fill certain gaps in this...
Basing on the study of correlations between large numbers of quantitative variables, the method fact...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...
A problem often occurring in exploratory data analysis is how to summarize large numbers of variable...
Several methods have been developed for the analysis of a mixture of qualitative and quantitative va...
Recently, a number of methods have been proposed for the exploratory analysis of mixtures of qualita...
International audienceAnalysing and clustering units described by a mixture of sets of quantitative,...
A number of methods for the analysis of three-way data are described and shown to be variants of pri...
Correspondence analysis and Multiple Correspondence Analysis (MCA) (Benzécri, 1973; Greenacre, 1984)...
Principal components analysis (PCA) for numerical variables and multiple correspondence analysis (MC...
This book expounds the principle and related applications of nonlinear principal component analysis ...
There is a general understanding that quantitative methods are more trustworthy than methods based u...
International audienceKiers (1991) considered the orthogonal rotation in PCAMIX, a principal compone...
Multiple correspondence analysis (MCA) is an extension of correspondence analysis (CA) which allows ...
Basing on the study of correlations between large numbers of quantitative variables, the method fact...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...
A problem often occurring in exploratory data analysis is how to summarize large numbers of variable...
Several methods have been developed for the analysis of a mixture of qualitative and quantitative va...
Recently, a number of methods have been proposed for the exploratory analysis of mixtures of qualita...
International audienceAnalysing and clustering units described by a mixture of sets of quantitative,...
A number of methods for the analysis of three-way data are described and shown to be variants of pri...
Correspondence analysis and Multiple Correspondence Analysis (MCA) (Benzécri, 1973; Greenacre, 1984)...
Principal components analysis (PCA) for numerical variables and multiple correspondence analysis (MC...
This book expounds the principle and related applications of nonlinear principal component analysis ...
There is a general understanding that quantitative methods are more trustworthy than methods based u...
International audienceKiers (1991) considered the orthogonal rotation in PCAMIX, a principal compone...
Multiple correspondence analysis (MCA) is an extension of correspondence analysis (CA) which allows ...
Basing on the study of correlations between large numbers of quantitative variables, the method fact...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
The present paper discusses several methods for (simultaneous) component analysis of scores of two o...