Many popular clustering techniques including K-means require various user inputs such as the number of clusters k, which can often be very difficult for a user to guess in advance. Moreover, existing techniques like K-means also have a tendency of getting stuck at local optima. As a result, various evolutionary algorithm based clustering techniques have been proposed. Typically, they choose the initial population randomly, whereas carefully selected initial population can improve final clustering results. Hence, some existing techniques such as GenClust carefully select high-quality initial population with a complexity of O(n2) which is very high. We propose a clustering technique that in addition to selecting an initial population with a l...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Comunicació presentada al IEEE Congress on Evolutionary Computation (CEC 2020), celebrat del 19 al 2...
The genetic algorithm of clustering of analysis objects in different data domains has been offered w...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
K-means clustering is an important and popular technique in data mining. Unfortunately, for any give...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
K-means clustering is an important and popular technique in data mining. Unfortunately, for any give...
Selection of initial points, the number of clusters and finding proper clusters centers are still th...
Selection of initial points, the number of clusters and finding proper clusters centers are still th...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
In this paper a genetic algorithm for clustering is proposed. The algorithm is based on the variable...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Comunicació presentada al IEEE Congress on Evolutionary Computation (CEC 2020), celebrat del 19 al 2...
The genetic algorithm of clustering of analysis objects in different data domains has been offered w...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
K-means clustering is an important and popular technique in data mining. Unfortunately, for any give...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
K-means clustering is an important and popular technique in data mining. Unfortunately, for any give...
Selection of initial points, the number of clusters and finding proper clusters centers are still th...
Selection of initial points, the number of clusters and finding proper clusters centers are still th...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
In this paper a genetic algorithm for clustering is proposed. The algorithm is based on the variable...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...