Abstract: Problem statement: Data clustering has been applied in multiple fields such as machine learning, data mining, wireless sensor networks and pattern recognition. One of the most famous clustering approaches is K-means which effectively has been used in many clustering problems, but this algorithm has some drawbacks such as local optimal convergence and sensitivity to initial points. Approach: Particle Swarm Optimization (PSO) algorithm is one of the swarm intelligence algorithms, which is applied in determining the optimal cluster centers. In this study, a cooperative algorithm based on PSO and k-means is presented. Result: The proposed algorithm utilizes both global search ability of PSO and local search ability of k-means. The pro...
[[abstract]]This paper presents an evolutionary particle swarm optimization (PSO) learning-based met...
The clustering is a without monitoring process and one of the most common data mining techniques. Th...
Summarization: This paper presents a new hybrid algorithm, which is based on the concepts of Particl...
In this paper we propose a clustering method based on combination of the particle swarm optimization...
Abstract—In this paper, the proposed approach is an unique combination of two most popular clusterin...
Clustering is a technique that can divide data objects into groups based on information found in the...
Clustering (or cluster analysis) aims to organize a collection of data items into clusters, such tha...
[[abstract]]Clustering analysis aims at discovering groups and identifying interesting distributions...
Abstract- This paper proposes two new approaches to using PSO to cluster data. It is shown how PSO c...
In today’s world data mining has become a large field of research. As the time increases a large amo...
Clustering is a process for partitioning datasets. This technique is a challenging field of research...
In today’s world data mining has become a large field of research. As the time increases a large amo...
Clustering is an unsupervised classification technique which deals with pattern recognition problems...
In order to overcome the shortcomings of traditional clustering algorithms such as local optima and ...
Clustering is an unsupervised classification technique which deals with pattern recognition problems...
[[abstract]]This paper presents an evolutionary particle swarm optimization (PSO) learning-based met...
The clustering is a without monitoring process and one of the most common data mining techniques. Th...
Summarization: This paper presents a new hybrid algorithm, which is based on the concepts of Particl...
In this paper we propose a clustering method based on combination of the particle swarm optimization...
Abstract—In this paper, the proposed approach is an unique combination of two most popular clusterin...
Clustering is a technique that can divide data objects into groups based on information found in the...
Clustering (or cluster analysis) aims to organize a collection of data items into clusters, such tha...
[[abstract]]Clustering analysis aims at discovering groups and identifying interesting distributions...
Abstract- This paper proposes two new approaches to using PSO to cluster data. It is shown how PSO c...
In today’s world data mining has become a large field of research. As the time increases a large amo...
Clustering is a process for partitioning datasets. This technique is a challenging field of research...
In today’s world data mining has become a large field of research. As the time increases a large amo...
Clustering is an unsupervised classification technique which deals with pattern recognition problems...
In order to overcome the shortcomings of traditional clustering algorithms such as local optima and ...
Clustering is an unsupervised classification technique which deals with pattern recognition problems...
[[abstract]]This paper presents an evolutionary particle swarm optimization (PSO) learning-based met...
The clustering is a without monitoring process and one of the most common data mining techniques. Th...
Summarization: This paper presents a new hybrid algorithm, which is based on the concepts of Particl...