This paper proposes a tutorial on the Data Clustering technique using the Particle Swarm Optimization approach. Following the work proposed by Merwe et al. here we present an in-deep analysis of the algorithm together with a Matlab implementation and a short tutorial that explains how to modify the proposed implementation and the effect of the parameters of the original algorithm. Moreover, we provide a comparison against the results obtained using the well known K-Means approach. All the source code presented in this paper is publicly available under the GPL-v2 license

Ballardini, A. (2018). A tutorial on Particle Swarm Optimization Clustering [Tutorial].

A tutorial on Particle Swarm Optimization Clustering

Ballardini, AL
2018

Abstract

This paper proposes a tutorial on the Data Clustering technique using the Particle Swarm Optimization approach. Following the work proposed by Merwe et al. here we present an in-deep analysis of the algorithm together with a Matlab implementation and a short tutorial that explains how to modify the proposed implementation and the effect of the parameters of the original algorithm. Moreover, we provide a comparison against the results obtained using the well known K-Means approach. All the source code presented in this paper is publicly available under the GPL-v2 license
Tutorial
particle swarm optimization, clustering, matlab, tutorial
English
6-set-2018
2018
https://arxiv.org/abs/1809.01942
Ballardini, A. (2018). A tutorial on Particle Swarm Optimization Clustering [Tutorial].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/205955
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