An approach based on tunicate swarm algorithm to solve partitional clustering problem

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info:eu-repo/semantics/openAccess

Özet

The tunicate swarm algorithm (TSA) is a newly proposed population-based swarm optimizer for solving global optimization problems. TSA uses best solution in the population in order improve the intensification and diversification of the tunicates. Thus, the possibility of finding a better position for search agents has increased. The aim of the clustering algorithms is to distributed the data instances into some groups according to similar and dissimilar features of instances. Therefore, with a proper clustering algorithm the dataset will be separated to some groups and it’s expected that the similarities of groups will be minimum. In this work, firstly, an approach based on TSA has proposed for solving partitional clustering problem. Then, the TSA is implemented on ten different clustering problems taken from UCI Machine Learning Repository, and the clustering performance of the TSA is compared with the performances of the three well known clustering algorithms such as fuzzy c-means, k-means and k-medoids. The experimental results and comparisons show that the TSA based approach is highly competitive and robust optimizer for solving the partitional clustering problems.

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Clustering, Fuzzy c-means, K-means, K-medoid, Tunicate swarm algorithm

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Balkan Journal of Electrical and Computer Engineering

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9

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3

Künye

ASLAN M (2021). An Approach Based on Tunicate Swarm Algorithm to Solve Partitional Clustering Problem. Balkan Journal of Electrical and Computer Engineering, 9(3), 242 - 248. Doi: 10.17694/bajece.904882

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