In this paper, a novel on-line evolving fuzzy clustering method that extends the evolving clustering method (ECM) of Kasabov and Song (2002) is presented, called EFCM. Since it is an on-line algorithm, the fuzzy membership matrix of the data is updated whenever the existing cluster expands, or a new cluster is formed. EFCM does not need the numbers of the clusters to be pre-defined. The algorithm is tested on several benchmark data sets, such as Iris, Wine, Glass, E-Coli, Yeast and Italian Olive oils. EFCM results in the least objective function value compared to the ECM and Fuzzy C-Means. It is significantly faster (by several orders of magnitude) than any of the off-line batch-mode clustering algorithms. A methodology is also proposed for...
This paper tackles the problem of showing that evolutionary algorithms for fuzzy clustering can be m...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
textabstractFuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has...
In this paper, a novel on-line evolving fuzzy clustering method that extends the evolving clustering...
Abstract—Despite the recent emergence of research, creating an evolving fuzzy clustering method that...
The Fuzzy C-Means (FCM) is a widely used clustering algorithm in unsupervised learning. It always co...
AbstractThis paper presents an idea of evolving Gustafson-Kessel possibilistic c-means clustering (e...
Major assumptions in computational intelligence and machine learning consist of the availability of ...
In this paper a new approach to data stream evolving fuzzy model identification is given. The struct...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
Clustering (or cluster analysis) aims toorganize a collection of data items into clusters,such that ...
Abstract-Researchers have observed that multistage clustering can accelerate convergence and improve...
AbstractSince its inception, Fuzzy c-means (FCM) technique has been widely used in data clustering. ...
[[abstract]]The popular fuzzy c-means algorithm (FCM) is an objective function based clustering meth...
101 p.Clustering represents a core research area of machine learning. It has been widely used in dat...
This paper tackles the problem of showing that evolutionary algorithms for fuzzy clustering can be m...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
textabstractFuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has...
In this paper, a novel on-line evolving fuzzy clustering method that extends the evolving clustering...
Abstract—Despite the recent emergence of research, creating an evolving fuzzy clustering method that...
The Fuzzy C-Means (FCM) is a widely used clustering algorithm in unsupervised learning. It always co...
AbstractThis paper presents an idea of evolving Gustafson-Kessel possibilistic c-means clustering (e...
Major assumptions in computational intelligence and machine learning consist of the availability of ...
In this paper a new approach to data stream evolving fuzzy model identification is given. The struct...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
Clustering (or cluster analysis) aims toorganize a collection of data items into clusters,such that ...
Abstract-Researchers have observed that multistage clustering can accelerate convergence and improve...
AbstractSince its inception, Fuzzy c-means (FCM) technique has been widely used in data clustering. ...
[[abstract]]The popular fuzzy c-means algorithm (FCM) is an objective function based clustering meth...
101 p.Clustering represents a core research area of machine learning. It has been widely used in dat...
This paper tackles the problem of showing that evolutionary algorithms for fuzzy clustering can be m...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
textabstractFuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has...