Two-mode clustering consists in simultaneously clustering modes (e.g., objects, variables) of an observed two-mode data matrix. This idea arises to confront situations in which objects are homogeneous only within subsets of variables, while variables may be strongly associated only on subsets of objects. There are many practical applications presenting the above situations, for example, DNA microarrays analysis and market basket analysis. Other applications include biology, psychology, sociology and so on. We focus on an extension of standard k-means, the double k-means, to simultaneously cluster objects and variables. We propose this model in a fuzzy framework and discuss the advantages of this approach. Finally, we check its adequacy...
Clustering is a popular unsupervised machine learning method that consists of grouping similar data ...
This correspondence describes extensions to the fuzzy k-means algorithm for clustering categorical d...
The paper deals with a special class of cluster analysis methods where a membership degree is calcul...
Abstract — This correspondence describes extensions to the fuzzy k-means algorithm for clustering ca...
Starting from an extension of standard K-means for simultaneously clustering observations and featur...
A general method for two-mode simultaneous reduction of observation units and variables of a data ma...
In this paper a robust fuzzy methodology for simultaneously clustering objects and variables is pro...
A general method for two-mode simultaneous reduction of units and variables of a data matrix is int...
We propose a new method for the simultaneous reduction of units and variables in a data matrix. Red...
AbstractFuzzy co-clustering is a basic technique for revealing intrinsic co-cluster structures from ...
International audienceWe propose two fuzzy co-clustering algorithms based on the double Kmeans algor...
Although most of the clustering literature focuses on one-sided clustering algorithms, simultaneous ...
textabstractTwo-mode clustering is a relatively new form of clustering that clusters both rows and ...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
New methodologies for two-mode (objects and variables) multi-partitioning of two way data are presen...
Clustering is a popular unsupervised machine learning method that consists of grouping similar data ...
This correspondence describes extensions to the fuzzy k-means algorithm for clustering categorical d...
The paper deals with a special class of cluster analysis methods where a membership degree is calcul...
Abstract — This correspondence describes extensions to the fuzzy k-means algorithm for clustering ca...
Starting from an extension of standard K-means for simultaneously clustering observations and featur...
A general method for two-mode simultaneous reduction of observation units and variables of a data ma...
In this paper a robust fuzzy methodology for simultaneously clustering objects and variables is pro...
A general method for two-mode simultaneous reduction of units and variables of a data matrix is int...
We propose a new method for the simultaneous reduction of units and variables in a data matrix. Red...
AbstractFuzzy co-clustering is a basic technique for revealing intrinsic co-cluster structures from ...
International audienceWe propose two fuzzy co-clustering algorithms based on the double Kmeans algor...
Although most of the clustering literature focuses on one-sided clustering algorithms, simultaneous ...
textabstractTwo-mode clustering is a relatively new form of clustering that clusters both rows and ...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
New methodologies for two-mode (objects and variables) multi-partitioning of two way data are presen...
Clustering is a popular unsupervised machine learning method that consists of grouping similar data ...
This correspondence describes extensions to the fuzzy k-means algorithm for clustering categorical d...
The paper deals with a special class of cluster analysis methods where a membership degree is calcul...