基于粒子群优化和蜜蜂算法的数据聚类

C. A. Dhote, A. Thakare, S. Chaudhari
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引用次数: 18

摘要

聚类是将数据组织成有意义的组的过程,这些组被称为集群。它是一种根据您选择的一些标准,将在某些方面相似的数据样本分组在一起的方法。群体智能(Swarm intelligence, SI)是一种社会系统的集体行为,如蚂蚁(蚁群优化,ACO)、鱼群、蜜蜂(蜜蜂算法,BA)和鸟类(粒子群优化,PSO)等昆虫。本文提出了一种基于粒子群算法和蜜蜂算法的混合群智能数据聚类技术。最近的研究表明,K-means和PSO的杂交更适合于大型数据集的聚类。由于k-means算法收敛速度比粒子群算法快,但往往陷入局部最优区域。本文提出了一种将BA与PSO相结合的新方法。
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Data clustering using particle swarm optimization and bee algorithm
Clustering is the process of organising data into meaningful groups, and these groups are called clusters. It is a way of grouping data samples together that is similar in some way, according to some criteria that you pick. Swarm intelligence (SI) is a collective behavior of social systems like insects such as ants (ant colony optimization, ACO), fish schooling, honey bees (bee algorithm, BA) and birds (particle swarm optimization, PSO). In this paper, a hybrid Swarm Intelligence based technique for data clustering is proposed using Particle Swarm Optimization and Bee Algorithm. Recent studies have shown that hybridization of K-means and PSO are more suitable for clustering large data sets. As the k-means algorithm tends to converge faster than PSO algorithm but usually trapped in a local optimal area. A new way of integrating BA with PSO proposed in this paper.
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