We propose a new measure to evaluate the distance between subjects expressing their preferences by rankings in order to segment them by hierarchical cluster analysis. The proposed index builds upon the Spearman’s grade correlation coefficient on a transformation, operated by the copula function, of the position/rank denoting the level of the importance assigned by subjects under classification to k objects. In particular, by using the copula functions with tail dependence we obtain an index suitable for emphasizing the agreement on top ranks, when the top ranks are considered more important than the lower ones. We evaluate the performance of our proposal by an example on simulated data, showing that the resulting groups contain subjects who...
<p>Agglomerative hierarchical cluster analysis for the whole data set to define the natural division...
Cluster analysis is one of the classification methods of multivariate statistical analysis. The task...
Time series clustering with a dissimilarity matrix based on tail dependence coefficients estimated b...
We propose a new measure to evaluate the distance between subjects expressing their preferences by r...
We aim to propose a new measure of the distance to evaluate the dissimilarity between rankings in a ...
We define a new distance measure for ranking data by using a mixture of copula functions. This dista...
We de\ufb01ne a new distance measure for ranking data by using a mixture of copula functions. This d...
A new distance measure is defined for ranking data by using copula functions. This distance evaluate...
We define a new distance measure for ranking data using a mixture of copula functions. Our distance ...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, com-m...
We propose a new dissimilarity measure for ranking data by using a mixture of copula functions. This...
3In this work we introduce a new dissimilarity measure based on the AliMikhail-Haq copula, motivated...
Objects can be clustered in many different ways. As a matter of fact there are several cluster analy...
Abstract In this paper we suggest a new index for measuring the distance between two hierarchical cl...
In this paper we suggest a new index for measuring thedistance between two hierarchical clusterings....
<p>Agglomerative hierarchical cluster analysis for the whole data set to define the natural division...
Cluster analysis is one of the classification methods of multivariate statistical analysis. The task...
Time series clustering with a dissimilarity matrix based on tail dependence coefficients estimated b...
We propose a new measure to evaluate the distance between subjects expressing their preferences by r...
We aim to propose a new measure of the distance to evaluate the dissimilarity between rankings in a ...
We define a new distance measure for ranking data by using a mixture of copula functions. This dista...
We de\ufb01ne a new distance measure for ranking data by using a mixture of copula functions. This d...
A new distance measure is defined for ranking data by using copula functions. This distance evaluate...
We define a new distance measure for ranking data using a mixture of copula functions. Our distance ...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, com-m...
We propose a new dissimilarity measure for ranking data by using a mixture of copula functions. This...
3In this work we introduce a new dissimilarity measure based on the AliMikhail-Haq copula, motivated...
Objects can be clustered in many different ways. As a matter of fact there are several cluster analy...
Abstract In this paper we suggest a new index for measuring the distance between two hierarchical cl...
In this paper we suggest a new index for measuring thedistance between two hierarchical clusterings....
<p>Agglomerative hierarchical cluster analysis for the whole data set to define the natural division...
Cluster analysis is one of the classification methods of multivariate statistical analysis. The task...
Time series clustering with a dissimilarity matrix based on tail dependence coefficients estimated b...