AbstractClustering is the problem of grouping objects on the basis of a similarity measure among them. Relational clustering methods can be employed when a feature-based representation of the objects is not available, and their description is given in terms of pairwise (dis)similarities. This paper focuses on the relational duals of fuzzy central clustering algorithms, and their application in situations when patterns are represented by means of non-metric pairwise dissimilarities. Symmetrization and shift operations have been proposed to transform the dissimilarities among patterns from non-metric to metric. In this paper, we analyze how four popular fuzzy central clustering algorithms are affected by such transformations. The main contrib...
In this paper, we propose a new approach to robust fuzzy clustering of relational data, which does n...
Our purpose is to provide a set-theoretical frame to clustering fuzzy relational data basically base...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
Clustering is the problem of grouping objects on the basis of a similarity measure among them. Relat...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
One of the critical aspects of clustering algorithms is the correct identification of the dissimilar...
Most clustering algorithms partition a data set based on a dissimilarity relation expressed in terms...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
Clustering refers to the process of unsupervised partitioning of a data set based on a dissimilarity...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
Clustering aims to partition a data set into homogenous groups which gather similar objects. Object ...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
By clustering one seeks to partition a given set of points into a number of clusters such that point...
In this paper, we show how one can take advantage of the stability and effectiveness of object data ...
Clustering is an underspecified task: there are no universal criteria for what makes a good clusteri...
In this paper, we propose a new approach to robust fuzzy clustering of relational data, which does n...
Our purpose is to provide a set-theoretical frame to clustering fuzzy relational data basically base...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
Clustering is the problem of grouping objects on the basis of a similarity measure among them. Relat...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
One of the critical aspects of clustering algorithms is the correct identification of the dissimilar...
Most clustering algorithms partition a data set based on a dissimilarity relation expressed in terms...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
Clustering refers to the process of unsupervised partitioning of a data set based on a dissimilarity...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
Clustering aims to partition a data set into homogenous groups which gather similar objects. Object ...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
By clustering one seeks to partition a given set of points into a number of clusters such that point...
In this paper, we show how one can take advantage of the stability and effectiveness of object data ...
Clustering is an underspecified task: there are no universal criteria for what makes a good clusteri...
In this paper, we propose a new approach to robust fuzzy clustering of relational data, which does n...
Our purpose is to provide a set-theoretical frame to clustering fuzzy relational data basically base...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...