A fuzzy clustering model for data with mixed features is proposed. The clustering model allows different types of variables, or attributes, to be taken into account. This result is achieved by combining the dissimilarity measures for each attribute by means of a weighting scheme, so as to obtain a distance measure for multiple attributes. The weights are objectively computed during the optimization process. The weights reflect the relevance of each attribute type in the clustering results. Two simulation studies and two empirical applications were carried out that show the effectiveness of the proposed clustering algorithm in finding clusters that would be otherwise hidden if a multi–attributes approach were not pursued
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
Most of the distances used in case of fuzzy data are based on the well-known Euclidean distance. In ...
textabstractFuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has...
A robust fuzzy clustering model for mixed data is proposed. For each variable, or attribute, a prope...
Practical applications in marketing research often involve mixtures of categorical and continuous va...
Practical applications often involve mixtures of categorical and continuousvariables. A variety of a...
Practical applications in marketing reesarch often involve mixtures of categorical and continuous va...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
A set of clustering algorithms with proper weight on the formulation of distance which extend to mix...
Clustering is an active research topic in data mining and different methods have been proposed in th...
Cluster analysis comprises of several unsupervised techniques aiming to identify a subgroup (cluster...
This paper proposes a fuzzy classification/regression method based on an extension of classical fuzz...
Feature selection is fundamentally an optimization problem for selecting relevant features from seve...
This paper is the second part of our study of the clustering problem with a fuzzy metric. The fuzzy ...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
Most of the distances used in case of fuzzy data are based on the well-known Euclidean distance. In ...
textabstractFuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has...
A robust fuzzy clustering model for mixed data is proposed. For each variable, or attribute, a prope...
Practical applications in marketing research often involve mixtures of categorical and continuous va...
Practical applications often involve mixtures of categorical and continuousvariables. A variety of a...
Practical applications in marketing reesarch often involve mixtures of categorical and continuous va...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
A set of clustering algorithms with proper weight on the formulation of distance which extend to mix...
Clustering is an active research topic in data mining and different methods have been proposed in th...
Cluster analysis comprises of several unsupervised techniques aiming to identify a subgroup (cluster...
This paper proposes a fuzzy classification/regression method based on an extension of classical fuzz...
Feature selection is fundamentally an optimization problem for selecting relevant features from seve...
This paper is the second part of our study of the clustering problem with a fuzzy metric. The fuzzy ...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
Most of the distances used in case of fuzzy data are based on the well-known Euclidean distance. In ...
textabstractFuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has...