Evolutionary algorithms (EAs) are random search heuristics which can solve various optimization problems. There are plenty of papers describing different approaches developed to apply evolutionary algorithms to the clustering problem, although none of them addressed the problem of fitness function computation. In clustering, many clustering validity indices exist that are designed to evaluate quality of resulting points partition. It is hard to use them as a fitness function due to their computational complexity. In this paper, we propose an efficient method for iterative computation of clustering validity indices which makes application of the EAs to this problem much more appropriate than it was before
Clustering is inherently a difficult problem, both with respect to the construction of adequate obje...
Abstract. The determination of the number of groups in a dataset, their composition and the most rel...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
This paper elaborates on the improvement of an evolutionary algorithm for clustering (EAC) introduce...
This paper tackles the problem of showing that evolutionary algorithms for fuzzy clustering can be m...
Abstract- Evolutionary clustering is a recent trend in cluster analysis, that has the potential to y...
Estimating the optimal number of clusters for a dataset is one of the most essential issues in clust...
A fuzzy version of an Evolutionary Algorithm for Clustering (EAC) proposed in, previous work is intr...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
Abstract. In this paper we propose a new evolutionary clustering algorithm named E-means. E-means is...
Abstract—Clustering is inherently a difficult problem, both with respect to the construction of adeq...
Abstract:- Estimating the optimal number of clusters for a dataset is one of the most essential issu...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
Abstract- Several versions of the parallel clustering sys-tem were studied to improve performance of...
Evolutionary computation tools are able to process real valued numerical sets in order to extract su...
Clustering is inherently a difficult problem, both with respect to the construction of adequate obje...
Abstract. The determination of the number of groups in a dataset, their composition and the most rel...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
This paper elaborates on the improvement of an evolutionary algorithm for clustering (EAC) introduce...
This paper tackles the problem of showing that evolutionary algorithms for fuzzy clustering can be m...
Abstract- Evolutionary clustering is a recent trend in cluster analysis, that has the potential to y...
Estimating the optimal number of clusters for a dataset is one of the most essential issues in clust...
A fuzzy version of an Evolutionary Algorithm for Clustering (EAC) proposed in, previous work is intr...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
Abstract. In this paper we propose a new evolutionary clustering algorithm named E-means. E-means is...
Abstract—Clustering is inherently a difficult problem, both with respect to the construction of adeq...
Abstract:- Estimating the optimal number of clusters for a dataset is one of the most essential issu...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
Abstract- Several versions of the parallel clustering sys-tem were studied to improve performance of...
Evolutionary computation tools are able to process real valued numerical sets in order to extract su...
Clustering is inherently a difficult problem, both with respect to the construction of adequate obje...
Abstract. The determination of the number of groups in a dataset, their composition and the most rel...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...