An improved adaptive memetic differential evolution optimization algorithms for data clustering problems.

The performance of data clustering algorithms is mainly dependent on their ability to balance between the exploration and exploitation of the search process. Although some data clustering algorithms have achieved reasonable quality solutions for some datasets, their performance across real-life data...

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Main Authors: Hossam M J Mustafa, Masri Ayob, Mohd Zakree Ahmad Nazri, Graham Kendall
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0216906
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spelling doaj-bf45c1b700424fefa1c8f0d140f9de242021-03-03T20:39:31ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01145e021690610.1371/journal.pone.0216906An improved adaptive memetic differential evolution optimization algorithms for data clustering problems.Hossam M J MustafaMasri AyobMohd Zakree Ahmad NazriGraham KendallThe performance of data clustering algorithms is mainly dependent on their ability to balance between the exploration and exploitation of the search process. Although some data clustering algorithms have achieved reasonable quality solutions for some datasets, their performance across real-life datasets could be improved. This paper proposes an adaptive memetic differential evolution optimisation algorithm (AMADE) for addressing data clustering problems. The memetic algorithm (MA) employs an adaptive differential evolution (DE) mutation strategy, which can offer superior mutation performance across many combinatorial and continuous problem domains. By hybridising an adaptive DE mutation operator with the MA, we propose that it can lead to faster convergence and better balance the exploration and exploitation of the search. We would also expect that the performance of AMADE to be better than MA and DE if executed separately. Our experimental results, based on several real-life benchmark datasets, shows that AMADE outperformed other compared clustering algorithms when compared using statistical analysis. We conclude that the hybridisation of MA and the adaptive DE is a suitable approach for addressing data clustering problems and can improve the balance between global exploration and local exploitation of the optimisation algorithm.https://doi.org/10.1371/journal.pone.0216906
collection DOAJ
language English
format Article
sources DOAJ
author Hossam M J Mustafa
Masri Ayob
Mohd Zakree Ahmad Nazri
Graham Kendall
spellingShingle Hossam M J Mustafa
Masri Ayob
Mohd Zakree Ahmad Nazri
Graham Kendall
An improved adaptive memetic differential evolution optimization algorithms for data clustering problems.
PLoS ONE
author_facet Hossam M J Mustafa
Masri Ayob
Mohd Zakree Ahmad Nazri
Graham Kendall
author_sort Hossam M J Mustafa
title An improved adaptive memetic differential evolution optimization algorithms for data clustering problems.
title_short An improved adaptive memetic differential evolution optimization algorithms for data clustering problems.
title_full An improved adaptive memetic differential evolution optimization algorithms for data clustering problems.
title_fullStr An improved adaptive memetic differential evolution optimization algorithms for data clustering problems.
title_full_unstemmed An improved adaptive memetic differential evolution optimization algorithms for data clustering problems.
title_sort improved adaptive memetic differential evolution optimization algorithms for data clustering problems.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description The performance of data clustering algorithms is mainly dependent on their ability to balance between the exploration and exploitation of the search process. Although some data clustering algorithms have achieved reasonable quality solutions for some datasets, their performance across real-life datasets could be improved. This paper proposes an adaptive memetic differential evolution optimisation algorithm (AMADE) for addressing data clustering problems. The memetic algorithm (MA) employs an adaptive differential evolution (DE) mutation strategy, which can offer superior mutation performance across many combinatorial and continuous problem domains. By hybridising an adaptive DE mutation operator with the MA, we propose that it can lead to faster convergence and better balance the exploration and exploitation of the search. We would also expect that the performance of AMADE to be better than MA and DE if executed separately. Our experimental results, based on several real-life benchmark datasets, shows that AMADE outperformed other compared clustering algorithms when compared using statistical analysis. We conclude that the hybridisation of MA and the adaptive DE is a suitable approach for addressing data clustering problems and can improve the balance between global exploration and local exploitation of the optimisation algorithm.
url https://doi.org/10.1371/journal.pone.0216906
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