A review on particle swarm optimization algorithms and their applications to data clustering

S Rana, S Jasola, R Kumar - Artificial Intelligence Review, 2011 - Springer
Artificial Intelligence Review, 2011Springer
Data clustering is one of the most popular techniques in data mining. It is a method of
grouping data into clusters, in which each cluster must have data of great similarity and high
dissimilarity with other cluster data. The most popular clustering algorithm K-mean and other
classical algorithms suffer from disadvantages of initial centroid selection, local optima, low
convergence rate problem etc. Particle Swarm Optimization (PSO) is a population based
globalized search algorithm that mimics the capability (cognitive and social behavior) of …
Abstract
Data clustering is one of the most popular techniques in data mining. It is a method of grouping data into clusters, in which each cluster must have data of great similarity and high dissimilarity with other cluster data. The most popular clustering algorithm K-mean and other classical algorithms suffer from disadvantages of initial centroid selection, local optima, low convergence rate problem etc. Particle Swarm Optimization (PSO) is a population based globalized search algorithm that mimics the capability (cognitive and social behavior) of swarms. PSO produces better results in complicated and multi-peak problems. This paper presents a literature survey on the PSO application in data clustering. PSO variants are also described in this paper. An attempt is made to provide a guide for the researchers who are working in the area of PSO and data clustering.
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