Cluster ensembles organically integrate individual component methods which may utilise different parameter settings and features, and which may themselves be generated on the basis of different representations and learning mechanisms. Such a technique offers an effective means for aggregating multiple clustering results in order to improve the overall clustering accuracy and robustness. Many topics regarding cluster ensembles have been proposed and promising results are gained in the literature. To reinforce such development, this paper presents another cluster ensemble approach for fuzzy clustering, with an aim to be applied for clustering of big data. The proposed algorithm first generates fuzzy base clusters with respect to each data fea...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
Ensemble clustering is known as a challenging research direction in data mining. The results of seve...
Because of its positive effects on dealing with the curse of dimensionality in big data, random proj...
Cluster ensembles organically integrate individual component methods which may utilise different par...
Ensemble clustering is a novel research field that extends to unsupervised learning the approach or...
In spite of some attempts at improving the quality of the clustering ensemble methods, it seems that...
AbstractCluster analysis is an important exploratory tool which reveals underlying structures in dat...
Clustering algorithms are an important tool for data mining and data analysis purposes. Clustering a...
Cluster ensemble offers an effective approach for aggregating multiple clustering results in order t...
In the clustering ensemble the quality of base-clusterings influences the consensus clustering. Alth...
AbstractSome methods of fuzzy clustering need to use a priori knowledge about the number of fuzzy cl...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
To improve the performance of clustering ensemble method, a selective fuzzy clustering ensemble algo...
The application of fuzzy cluster analysis to larger data sets can cause runtime and memory overflow ...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
Ensemble clustering is known as a challenging research direction in data mining. The results of seve...
Because of its positive effects on dealing with the curse of dimensionality in big data, random proj...
Cluster ensembles organically integrate individual component methods which may utilise different par...
Ensemble clustering is a novel research field that extends to unsupervised learning the approach or...
In spite of some attempts at improving the quality of the clustering ensemble methods, it seems that...
AbstractCluster analysis is an important exploratory tool which reveals underlying structures in dat...
Clustering algorithms are an important tool for data mining and data analysis purposes. Clustering a...
Cluster ensemble offers an effective approach for aggregating multiple clustering results in order t...
In the clustering ensemble the quality of base-clusterings influences the consensus clustering. Alth...
AbstractSome methods of fuzzy clustering need to use a priori knowledge about the number of fuzzy cl...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
To improve the performance of clustering ensemble method, a selective fuzzy clustering ensemble algo...
The application of fuzzy cluster analysis to larger data sets can cause runtime and memory overflow ...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
Ensemble clustering is known as a challenging research direction in data mining. The results of seve...
Because of its positive effects on dealing with the curse of dimensionality in big data, random proj...