The application of fuzzy cluster analysis to larger data sets can cause runtime and memory overflow problems. While deterministic or hard clustering assigns a data object to a unique cluster, fuzzy clustering distributes the membership of a data object over different clusters. In standard fuzzy clustering, membership degrees will (almost) never become zero, so that all data objects are assigned to − even with very small membership degrees − all clusters. As a consequence, this does not only demand higher computational and memory power, it also leads to the undesired effect that all data objects will always influence all clusters, no matter how far away they are from a cluster. New approaches, modifying the idea of the fuzzifier, have been d...
Algorithms for automatic selection of seed points for clustering are described using the terms 'inde...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
The most common fuzzy clustering algorithms are based on the minimization of an objective function t...
The paper deals with a special class of cluster analysis methods where a membership degree is calcul...
Fuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has been applie...
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...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
Clustering is an important research area that has practical applications in many elds. Fuzzy cluster...
There are some variants of the widely used Fuzzy C-Means (FCM) algorithm that support clustering dat...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
This chapter presents a unified framework to generalize a number of fuzzy clustering algorithms to h...
Abstract. A new robust clustering scheme based on fuzzy c-means is proposed and the concept of a fuz...
Clustering algorithms are a primary tool in data analysis, facilitating the discovery of groups and ...
Algorithms for automatic selection of seed points for clustering are described using the terms 'inde...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
The most common fuzzy clustering algorithms are based on the minimization of an objective function t...
The paper deals with a special class of cluster analysis methods where a membership degree is calcul...
Fuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has been applie...
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...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
Clustering is an important research area that has practical applications in many elds. Fuzzy cluster...
There are some variants of the widely used Fuzzy C-Means (FCM) algorithm that support clustering dat...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
This chapter presents a unified framework to generalize a number of fuzzy clustering algorithms to h...
Abstract. A new robust clustering scheme based on fuzzy c-means is proposed and the concept of a fuz...
Clustering algorithms are a primary tool in data analysis, facilitating the discovery of groups and ...
Algorithms for automatic selection of seed points for clustering are described using the terms 'inde...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...