International audienceWe present a new algorithm capable of partitioning sets of objects by taking simultaneously into account their relational descriptions given by multiple dissimilarity matrices. The novelty of the algorithm is that it is based on a nonlinear aggregation criterion, weighted Tchebycheff distances, more appropriate than linear combinations (such as weighted averages) for the construction of compromise solutions. We obtain a hard partition of the set of objects, the prototype of each cluster and a weight vector that indicates the relevance of each matrix in each cluster. Since this is a clustering algorithm for relational data, it is compatible with any distance function used to measure the dissimilarity between objects. Re...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
Abstract- The large majority of existing clustering algorithms are centered around the notion of a f...
International audienceWe present a new algorithm capable of partitioning sets of objects by taking s...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
International audienceWe introduce partitioning clustering models and algorithms that are able to pa...
International audienceClustering is a popular task in knowledge discovery. In this chapter we illust...
International audienceThis paper introduces an improvement of a clustering algorithm \citep{decarval...
Most clustering algorithms partition a data set based on a dissimilarity relation expressed in terms...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
In this paper we address the question of multicriteria relational clustering. We develop a method th...
Abstract — We propose a novel approach to relational cluster-ing: Given a matrix of pairwise similar...
One of the critical aspects of clustering algorithms is the correct identification of the dissimilar...
In this paper, a multi-objective clustering technique is proposed to find the appropriate partition ...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
Abstract- The large majority of existing clustering algorithms are centered around the notion of a f...
International audienceWe present a new algorithm capable of partitioning sets of objects by taking s...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
International audienceWe introduce partitioning clustering models and algorithms that are able to pa...
International audienceClustering is a popular task in knowledge discovery. In this chapter we illust...
International audienceThis paper introduces an improvement of a clustering algorithm \citep{decarval...
Most clustering algorithms partition a data set based on a dissimilarity relation expressed in terms...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
In this paper we address the question of multicriteria relational clustering. We develop a method th...
Abstract — We propose a novel approach to relational cluster-ing: Given a matrix of pairwise similar...
One of the critical aspects of clustering algorithms is the correct identification of the dissimilar...
In this paper, a multi-objective clustering technique is proposed to find the appropriate partition ...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
Abstract- The large majority of existing clustering algorithms are centered around the notion of a f...