In this paper a robust fuzzy methodology for simultaneously clustering objects and variables is proposed. Starting from Double kMeans, different fuzzy generalizations for categorical multivariate data have been proposed in literature which are not appropriate for heterogeneous two-mode datasets, especially if outliers occur. In practice, in these cases, the existing fuzzy procedures do not recognize them. In order to overcome that inconvenience and to take into account a certain amount of outlying observations a new fuzzy approach with noise clusters for the objects and variables is introduced and discussed
Fuzzy systems which are an artificial intelligent technique are applicable for controlling and decis...
For the last decades, research studies have been developed in which a coalition of Fuzzy Sets Theory...
Fuzzy classifiers are important tools in exploratory data analysis, which is a vital set of methods u...
Two-mode clustering consists in simultaneously clustering modes (e.g., objects, variables) of an obs...
International audienceWe propose two fuzzy co-clustering algorithms based on the double Kmeans algor...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
Clustering is a popular unsupervised machine learning method that consists of grouping similar data ...
Robust fuzzy clustering of multivariate time series is addressed when the clustering purpose is grou...
summary:An iterative fuzzy clustering method is proposed to partition a set of multivariate binary o...
Ensemble clustering is a novel research field that extends to unsupervised learning the approach or...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...
Nowadays, the Fuzzy C-Means method has become one of the most popular clustering methods based on mi...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
The paper presents an application of fuzzy logic to the problem of outliers detection. The overall p...
Abstract. A new robust clustering scheme based on fuzzy c-means is proposed and the concept of a fuz...
Fuzzy systems which are an artificial intelligent technique are applicable for controlling and decis...
For the last decades, research studies have been developed in which a coalition of Fuzzy Sets Theory...
Fuzzy classifiers are important tools in exploratory data analysis, which is a vital set of methods u...
Two-mode clustering consists in simultaneously clustering modes (e.g., objects, variables) of an obs...
International audienceWe propose two fuzzy co-clustering algorithms based on the double Kmeans algor...
Robust fuzzy clustering models for fuzzy data are proposed. In particular, using a “Partitioning Aro...
Clustering is a popular unsupervised machine learning method that consists of grouping similar data ...
Robust fuzzy clustering of multivariate time series is addressed when the clustering purpose is grou...
summary:An iterative fuzzy clustering method is proposed to partition a set of multivariate binary o...
Ensemble clustering is a novel research field that extends to unsupervised learning the approach or...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...
Nowadays, the Fuzzy C-Means method has become one of the most popular clustering methods based on mi...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
The paper presents an application of fuzzy logic to the problem of outliers detection. The overall p...
Abstract. A new robust clustering scheme based on fuzzy c-means is proposed and the concept of a fuz...
Fuzzy systems which are an artificial intelligent technique are applicable for controlling and decis...
For the last decades, research studies have been developed in which a coalition of Fuzzy Sets Theory...
Fuzzy classifiers are important tools in exploratory data analysis, which is a vital set of methods u...