The K-means algorithm for clustering is very much dependent on the initial seed values. We use a genetic algorithm to find a near-optimal partitioning of the given data set by selecting proper initial seed values in the K-means algorithm. Results obtained are very encouraging and in most of the cases, on data sets having well separated clusters, the proposed scheme reached a global minimum
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
Abstract. GA-based clustering algorithms often employ either simple GA, steady state GA or their var...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
We present a genetic algorithm for selecting centers to seed the popular k-means method for clusteri...
K-means clustering is an important and popular technique in data mining. Unfortunately, for any give...
In this article the performance of the genetic algorithm for solving some clustering problem is inve...
Abstract:- K-means algorithm is most widely used algorithm for unsupervised clustering problem. Thou...
The k-means algorithm is widely used for clustering because of its computational efficiency. Given n...
This article presents a newly proposed selection process for genetic algorithms on a class of uncons...
K-Means (KM) is considered one of the major algorithms widely used in clustering. However, it still ...
Abstract—In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optim...
In this paper the performance of genetic algorithms for solving some clustering problems is investig...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Three approaches to partitional clustering using genetic algorithms (GA) are compared with k-means a...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
Abstract. GA-based clustering algorithms often employ either simple GA, steady state GA or their var...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
We present a genetic algorithm for selecting centers to seed the popular k-means method for clusteri...
K-means clustering is an important and popular technique in data mining. Unfortunately, for any give...
In this article the performance of the genetic algorithm for solving some clustering problem is inve...
Abstract:- K-means algorithm is most widely used algorithm for unsupervised clustering problem. Thou...
The k-means algorithm is widely used for clustering because of its computational efficiency. Given n...
This article presents a newly proposed selection process for genetic algorithms on a class of uncons...
K-Means (KM) is considered one of the major algorithms widely used in clustering. However, it still ...
Abstract—In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optim...
In this paper the performance of genetic algorithms for solving some clustering problems is investig...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Three approaches to partitional clustering using genetic algorithms (GA) are compared with k-means a...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...
Abstract. GA-based clustering algorithms often employ either simple GA, steady state GA or their var...
GA-based clustering algorithms often employ either simple GA, steady state GA or their variants and ...