Although there have been many researches in cluster analysis to consider on feature weights, little effort is made on sample weights. Recently, Yu et al. (2011) considered a probability distribution over a data set to represent its sample weights and then proposed sample-weighted clustering algorithms. In this paper, we give a sample-weighted version of generalized fuzzy clustering regularization (GFCR), called the sample-weighted GFCR (SW-GFCR). Some experiments are considered. These experimental results and comparisons demonstrate that the proposed SW-GFCR is more effective than the most clustering algorithms
Fuzzy C-means (FCM) is a powerful clustering algorithm and has been introduced to overcome the crisp...
In this short paper, a unified framework for performing density-weighted fuzzy c-means (FCM) cluster...
In this paper we study the fuzzy c-mean clustering algorithm combined with principal components meth...
AbstractAlthough there have been many researches on cluster analysis considering feature (or variabl...
This paper proposes a fuzzy classification/regression method based on an extension of classical fuzz...
Abstract—In this paper, we propose a generalized fuzzy clus-tering regularization (GFCR) model and t...
Abstract—Fuzzy C-means (FCM) is a powerful clustering algorithm and has been introduced to overcome ...
We introduce in this paper a new formulation of the regularized fuzzy c-means (FCM) algorithm which ...
Probabilistic fuzzy classifiers are classifier systems that combine fuzzy set theory with probabilit...
Ensemble clustering is a novel research field that extends to unsupervised learning the approach or...
We introduce in this paper a new formulation of the regularized fuzzy C-means (FCM) algorithm which ...
Nowadays, the Fuzzy C-Means method has become one of the most popular clustering methods based on mi...
The fuzziness index m has important influence on the clustering result of fuzzy clustering algorithm...
M-estimators can be seen as a special case of robust clustering algorithms. In this paper, we presen...
This paper introduces a filter, named FCF (Fuzzy Clustering-based Filter), for removing redundant fe...
Fuzzy C-means (FCM) is a powerful clustering algorithm and has been introduced to overcome the crisp...
In this short paper, a unified framework for performing density-weighted fuzzy c-means (FCM) cluster...
In this paper we study the fuzzy c-mean clustering algorithm combined with principal components meth...
AbstractAlthough there have been many researches on cluster analysis considering feature (or variabl...
This paper proposes a fuzzy classification/regression method based on an extension of classical fuzz...
Abstract—In this paper, we propose a generalized fuzzy clus-tering regularization (GFCR) model and t...
Abstract—Fuzzy C-means (FCM) is a powerful clustering algorithm and has been introduced to overcome ...
We introduce in this paper a new formulation of the regularized fuzzy c-means (FCM) algorithm which ...
Probabilistic fuzzy classifiers are classifier systems that combine fuzzy set theory with probabilit...
Ensemble clustering is a novel research field that extends to unsupervised learning the approach or...
We introduce in this paper a new formulation of the regularized fuzzy C-means (FCM) algorithm which ...
Nowadays, the Fuzzy C-Means method has become one of the most popular clustering methods based on mi...
The fuzziness index m has important influence on the clustering result of fuzzy clustering algorithm...
M-estimators can be seen as a special case of robust clustering algorithms. In this paper, we presen...
This paper introduces a filter, named FCF (Fuzzy Clustering-based Filter), for removing redundant fe...
Fuzzy C-means (FCM) is a powerful clustering algorithm and has been introduced to overcome the crisp...
In this short paper, a unified framework for performing density-weighted fuzzy c-means (FCM) cluster...
In this paper we study the fuzzy c-mean clustering algorithm combined with principal components meth...