Clustering analysis includes a number of different algorithms and methods for grouping objects by their similar characteristics into categories. In recent years, considerable effort has been made to improve such algorithms performance. In this sense, this paper explores three different bio-inspired metaheuristics in the clustering problem: Genetic Algorithms (GAs), Ant Colony Optimization (ACO), and Artificial Immune Systems (AIS). This paper proposes some refinements to be applied to these metaheuristics in order to improve their performance in the data clustering problem. The performance of the proposed algorithms is compared on five different numeric UCI databases. The results show that GA, ACO and AIS based algorithms are able to effici...
Data clustering is popular data analysis approaches, which used to organizing data into sensible clu...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Abstract. Most of the classical clustering algorithms are strongly dependent on, and sensitive to, p...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Many popular clustering techniques including K-means require various user inputs such as the number ...
The clustering algorithms have evolved over the last decade. With the continuous success of natural ...
Clustering is a distribution of data into groups of similar objects. In this paper, Ant Colony Optim...
Although K-means clustering algorithm is simple and popular, it has a fundamental drawback of fallin...
The genetic algorithm of clustering of analysis objects in different data domains has been offered w...
Three approaches to partitional clustering using genetic algorithms (GA) are compared with k-means a...
Data clustering is a popular data analysis technique needed in many fields. Recent years, some swarm...
Summarization: This paper presents a new stochastic nature inspired methodology, which is based on t...
The clustering problem has been studied by many researchers using various approaches, including tabu...
Characterized as one of the most important operations related to data analysis, one non-hierarchical...
Data clustering is popular data analysis approaches, which used to organizing data into sensible clu...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Abstract. Most of the classical clustering algorithms are strongly dependent on, and sensitive to, p...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Many popular clustering techniques including K-means require various user inputs such as the number ...
The clustering algorithms have evolved over the last decade. With the continuous success of natural ...
Clustering is a distribution of data into groups of similar objects. In this paper, Ant Colony Optim...
Although K-means clustering algorithm is simple and popular, it has a fundamental drawback of fallin...
The genetic algorithm of clustering of analysis objects in different data domains has been offered w...
Three approaches to partitional clustering using genetic algorithms (GA) are compared with k-means a...
Data clustering is a popular data analysis technique needed in many fields. Recent years, some swarm...
Summarization: This paper presents a new stochastic nature inspired methodology, which is based on t...
The clustering problem has been studied by many researchers using various approaches, including tabu...
Characterized as one of the most important operations related to data analysis, one non-hierarchical...
Data clustering is popular data analysis approaches, which used to organizing data into sensible clu...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
Abstract. Most of the classical clustering algorithms are strongly dependent on, and sensitive to, p...