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Reporting and Analyzing Alternative Clustering Solutions by Employing Multi-Objective Genetic Algorithm and Conducting Experiments on Cancer Data

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Date

2014

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Open Access Color

Green Open Access

Yes

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0

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1

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No
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Abstract

Clustering is an essential research problem which has received considerable attention in the research community for decades. It is a challenge because there is no unique solution that fits all problems and satisfies all applications. We target to get the most appropriate clustering solution for a given application domain. In other words, clustering algorithms in general need prior specification of the number of clusters, and this is hard even for domain experts to estimate especially in a dynamic environment where the data changes and/or become available incrementally. In this paper, we described and analyze the effectiveness of a robust clustering algorithm which integrates multi-objective genetic algorithm into a framework capable of producing alternative clustering solutions; it is called Multi-objective K-Means Genetic Algorithm (MOKGA). We investigate its application for clustering a variety of datasets, including microarray gene expression data. The reported results are promising. Though we concentrate on gene expression and mostly cancer data, the proposed approach is general enough and works equally to cluster other datasets as demonstrated by the two datasets Iris and Ruspini. After running MOKGA, a pareto-optimal front is obtained, and gives the optimal number of clusters as a solution set. The achieved clustering results are then analyzed and validated under several cluster validity techniques proposed in the literature. As a result, the optimal clusters are ranked for each validity index. We apply majority voting to decide on the most appropriate set of validity indexes applicable to every tested dataset. The proposed clustering approach is tested by conducting experiments using seven well cited benchmark data sets. The obtained results are compared with those reported in the literature to demonstrate the applicability and effectiveness of the proposed approach. (C) 2013 Elsevier B.V. All rights reserved.

Description

Kaya, Mehmet/0000-0003-2995-8282

Keywords

Clustering, Genetic Algorithm, Gene Expression Data, Multi-Objective Optimization, Cluster Validity Analysis, Data, Genetic Algorithm, Multi-Objective Optimization, Clustering, 004, 620, Cluster validity analysis, Cluster Validity Analysis, Genetic algorithm, Multi-objective optimisation, Gene expression, Gene Expression Data

Fields of Science

0301 basic medicine, 02 engineering and technology, 03 medical and health sciences, 0202 electrical engineering, electronic engineering, information engineering

Citation

Peng, Peter...et.al., "Reporting and analyzing alternative clustering solutions by employing multi-objective genetic algorithm and conducting experiments on cancer data" Knowledge-Based Systems, Vol.56, pp.108-122, (2014).

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Q1

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OpenCitations Citation Count
25

Source

Knowledge-Based Systems

Volume

56

Issue

Start Page

108

End Page

122
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CrossRef : 24

Scopus : 26

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Mendeley Readers : 32

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27

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Web of Science™ Citations

21

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3

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1.9008

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