In this work we are interested in identifying clusters of ‘‘positional equivalent’ ’ actors, i.e. actors who play a similar role in a system. In particular, we analyze weighted bipartite networks that describes the relationships between actors on one side and features or traits on the other, together with the intensity level to which actors show their features. We develop a methodological approach that takes into account the underlying multivariate dependence among groups of actors. The idea is that positions in a network could be defined on the basis of the similar intensity levels that the actors exhibit in expressing some features, instead of just considering relationships that actors hold with each others. Moreover, we propose a new clu...
Community detection or clustering is a fundamental task in the analysis of network data. Many real n...
We define a new distance measure for ranking data by using a mixture of copula functions. This dista...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, com-m...
In this work we are interested in identifying clusters of ‘‘positional equivalent’’ actors, i.e. act...
<div><p>In this work we are interested in identifying clusters of “positional equivalent” actors, i....
In this work we are interested in identifying clusters of "positional equivalent" actors, i.e. actor...
In this work we are interested in identifying clusters of "positional equivalent" actors, i.e. actor...
The main aim of this work is the study of clustering dependent data by means of copula functions. Co...
A general approach to exploratory analysis and modeling of network data is to investigate dyad distr...
Finite mixtures are applied to perform model-based clustering of multivariate data. Existing models ...
Bipartite networks have gained an increasing amount of attention over the past few years. Network me...
We propose a clustering procedure to group K populations into subgroups with the same dependence str...
When two interventions are randomized to multiple sub-clusters within a whole cluster, accounting fo...
Complex bipartite systems are studied in Biology, Physics, Economics, and Social Sciences, and they ...
The majority of model-based clustering techniques is based on multivariate Normal models and their v...
Community detection or clustering is a fundamental task in the analysis of network data. Many real n...
We define a new distance measure for ranking data by using a mixture of copula functions. This dista...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, com-m...
In this work we are interested in identifying clusters of ‘‘positional equivalent’’ actors, i.e. act...
<div><p>In this work we are interested in identifying clusters of “positional equivalent” actors, i....
In this work we are interested in identifying clusters of "positional equivalent" actors, i.e. actor...
In this work we are interested in identifying clusters of "positional equivalent" actors, i.e. actor...
The main aim of this work is the study of clustering dependent data by means of copula functions. Co...
A general approach to exploratory analysis and modeling of network data is to investigate dyad distr...
Finite mixtures are applied to perform model-based clustering of multivariate data. Existing models ...
Bipartite networks have gained an increasing amount of attention over the past few years. Network me...
We propose a clustering procedure to group K populations into subgroups with the same dependence str...
When two interventions are randomized to multiple sub-clusters within a whole cluster, accounting fo...
Complex bipartite systems are studied in Biology, Physics, Economics, and Social Sciences, and they ...
The majority of model-based clustering techniques is based on multivariate Normal models and their v...
Community detection or clustering is a fundamental task in the analysis of network data. Many real n...
We define a new distance measure for ranking data by using a mixture of copula functions. This dista...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, com-m...