Clustering of variables is as a way to arrange variables into homogeneous clusters, i.e., groups of variables which are strongly related to each other and thus bring the same information. These approaches can then be useful for dimension reduction and variable selection. Several specific methods have been developed for the clustering of numerical variables. However concerning qualitative variables or mixtures of quantitative and qualitative variables, far fewer methods have been proposed. The R package ClustOfVar was specifically developed for this purpose. The homogeneity criterion of a cluster is defined as the sum of correlation ratios (for qualitative variables) and squared correlations (for quantitative variables) to a synthetic quanti...
International audienceThe clustering of objects (individuals or variables) is one of the most used a...
Clustering is the partitioning of a set of objects into groups (clusters) so that objects within a g...
Data clustering techniques are valuable tools for researchers working with large databases of multiv...
Clustering of variables is as a way to arrange variables into homogeneous clusters, i.e., groups of ...
Clustering of variables is as a way to arrange variables into homogeneous clusters, i.e., groups of ...
Clustering of variables is as a way to arrange variables into homogeneous clusters i.e. groups of va...
International audienceThis chapter presents clustering of variables which aim is to lump together st...
Finite mixture modeling provides a framework for cluster analysis based on parsimonious Gaussian mix...
The purpose of this book is to thoroughly prepare the reader for applied research in clustering. Clu...
The purpose of this book is to thoroughly prepare the reader for applied research in clustering. Clu...
We present the R package clustrd which implements a class of methods that combine dimension reductio...
We present the R package clustrd which implements a class of methods that combine dimension reductio...
Standard approaches to tackle high-dimensional supervised classification often include variable sele...
Dimension reduction is one of the biggest challenge in high-dimensional regression models. We recent...
International audienceThe main goal of this work is to tackle the problem of dimension reduction for...
International audienceThe clustering of objects (individuals or variables) is one of the most used a...
Clustering is the partitioning of a set of objects into groups (clusters) so that objects within a g...
Data clustering techniques are valuable tools for researchers working with large databases of multiv...
Clustering of variables is as a way to arrange variables into homogeneous clusters, i.e., groups of ...
Clustering of variables is as a way to arrange variables into homogeneous clusters, i.e., groups of ...
Clustering of variables is as a way to arrange variables into homogeneous clusters i.e. groups of va...
International audienceThis chapter presents clustering of variables which aim is to lump together st...
Finite mixture modeling provides a framework for cluster analysis based on parsimonious Gaussian mix...
The purpose of this book is to thoroughly prepare the reader for applied research in clustering. Clu...
The purpose of this book is to thoroughly prepare the reader for applied research in clustering. Clu...
We present the R package clustrd which implements a class of methods that combine dimension reductio...
We present the R package clustrd which implements a class of methods that combine dimension reductio...
Standard approaches to tackle high-dimensional supervised classification often include variable sele...
Dimension reduction is one of the biggest challenge in high-dimensional regression models. We recent...
International audienceThe main goal of this work is to tackle the problem of dimension reduction for...
International audienceThe clustering of objects (individuals or variables) is one of the most used a...
Clustering is the partitioning of a set of objects into groups (clusters) so that objects within a g...
Data clustering techniques are valuable tools for researchers working with large databases of multiv...