Manifold multidimensional concepts are explained via a tree-shape structure by taking into account the nested hierarchical partition of variables. The root of the tree is a general concept which includes more specific ones. In order to detect the different specific concepts at each level of the hierarchy, we can identify two different features regarding groups of variables: the internal consistency of a concept and the correlation between concepts. Thus, given a data positive correlation matrix, we reconstruct the latter via an ultrametric correlation matrix which detects hierarchical concepts by looking for their internal consistency and the correlation between them measured by relative indices
Complex multidimensional concepts are often explained by a tree-shape structure by considering neste...
The concept vector model generalizes standard representations of similarity concept in terms of tree...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...
Many relevant multidimensional phenomena, such as well-being, climate change, sustainable developmen...
Many relevant multidimensional phenomena are defined by nested latent concepts, which can be represe...
To assess, analyse and control complex processes and phenomena, the knowledge of their inherent stru...
We introduce a method to learn a hierarchy of successively more abstract represen-tations of complex...
The coefficient of correlation is a fairly general measure which subsumes other, more primitive rel...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
The known hierarchical clustering scheme is equivalent to the concept of ultrametric distance. Every...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
Two classes of hierarchical relationships that are determined. It is useful in the hierarchical mode...
Dimensionality reduction aims at representing high-dimensional data in a lower-dimensional represent...
The known hierarchical clustering scheme is equivalent to the concept of ul- trametric distance. AII...
We show how to achieve a statistical description of the hierarchical structure of a multivariate dat...
Complex multidimensional concepts are often explained by a tree-shape structure by considering neste...
The concept vector model generalizes standard representations of similarity concept in terms of tree...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...
Many relevant multidimensional phenomena, such as well-being, climate change, sustainable developmen...
Many relevant multidimensional phenomena are defined by nested latent concepts, which can be represe...
To assess, analyse and control complex processes and phenomena, the knowledge of their inherent stru...
We introduce a method to learn a hierarchy of successively more abstract represen-tations of complex...
The coefficient of correlation is a fairly general measure which subsumes other, more primitive rel...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
The known hierarchical clustering scheme is equivalent to the concept of ultrametric distance. Every...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
Two classes of hierarchical relationships that are determined. It is useful in the hierarchical mode...
Dimensionality reduction aims at representing high-dimensional data in a lower-dimensional represent...
The known hierarchical clustering scheme is equivalent to the concept of ul- trametric distance. AII...
We show how to achieve a statistical description of the hierarchical structure of a multivariate dat...
Complex multidimensional concepts are often explained by a tree-shape structure by considering neste...
The concept vector model generalizes standard representations of similarity concept in terms of tree...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...