Article,

A Survey on K-mean Clustering and Particle Swarm Optimization

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International Journal of Innovative Science and Modern Engineering (IJISME), 1 (3): 24-26 (February 2013)

Abstract

In Data Mining, Clustering is an important research topic and wide range of unsupervised classification application. Clustering is technique which divides a data into meaningful groups. K-mean is one of the popular clustering algorithms. K-mean clustering is widely used to minimize squared distance between features values of two points reside in the same cluster. Particle swarm optimization is an evolutionary computation technique which finds optimum solution in many applications. Using the PSO optimized clustering results in the components, in order to get a more precise clustering efficiency. In this paper, we present the comparison of K-mean clustering and the Particle swarm optimization.

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  • @ijisme_beiesp
    3 years ago (last updated 3 years ago)
    good
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