The well-known fuzzy partition clustering algorithms are mainly based on Euclidean distance measure for partitioning, which can only be used for the clusters in the data set with the same super-spherical shape distribution. Instead of using Euclid-ean distance measure, Gustafson & Kessel (1979) proposed the G-K algorithm which employs the Mahalanobis distance. It is a fuzzy partition clustering algorithm which can be used for the clusters in the data set with different geometrical shapes. However, without the prior information of the shape volume for each class, the G-K algorithm can only be utilized for the clusters with the same volume in the data set. In other words, if any dimension of a class is greater than the number of samples i...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
This paper proposes a novel k'-means algorithm for clustering analysis for the cases that the t...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
Abstract:- The well known fuzzy partition clustering algorithms are most based on Euclidean distance...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
Abstract—Some of the well-known fuzzy clustering algorithms are based on Euclidean distance function...
[[abstract]]Some of the wall-known fuzzy clustering algorithms are based on Euclidean distance funct...
In GK-algorithm, modified Mahalanobis distance with preserved volume was used. However, the added fu...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
Most of the distances used in case of fuzzy data are based on the well-known Euclidean distance. In ...
The Fuzzy k-Means (FkM) algorithm is a tool for clustering n objects into k homogeneous groups. FkM ...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
In this paper, we propose a factor weighted fuzzy c-means clustering algorithm. Based on the inverse...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
This paper proposes a novel k'-means algorithm for clustering analysis for the cases that the t...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
Abstract:- The well known fuzzy partition clustering algorithms are most based on Euclidean distance...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
Abstract—Some of the well-known fuzzy clustering algorithms are based on Euclidean distance function...
[[abstract]]Some of the wall-known fuzzy clustering algorithms are based on Euclidean distance funct...
In GK-algorithm, modified Mahalanobis distance with preserved volume was used. However, the added fu...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
Most of the distances used in case of fuzzy data are based on the well-known Euclidean distance. In ...
The Fuzzy k-Means (FkM) algorithm is a tool for clustering n objects into k homogeneous groups. FkM ...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
In this paper, we propose a factor weighted fuzzy c-means clustering algorithm. Based on the inverse...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
This paper proposes a novel k'-means algorithm for clustering analysis for the cases that the t...