A genetic k-medoids clustering algorithm |
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Authors: | Weiguo Sheng Xiaohui Liu |
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Affiliation: | (1) Department of Electronics, University of Kent, Canterbury, Kent, CT2 7NT, UK;(2) Department of Information System and Computing, Brunel University, UB8 3PH London, UK |
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Abstract: | We propose a hybrid genetic algorithm for k-medoids clustering. A novel heuristic operator is designed and integrated with the genetic algorithm to fine-tune the search. Further, variable length individuals that encode different number of medoids (clusters) are used for evolution with a modified Davies-Bouldin index as a measure of the fitness of the corresponding partitionings. As a result the proposed algorithm can efficiently evolve appropriate partitionings while making no a priori assumption about the number of clusters present in the datasets. In the experiments, we show the effectiveness of the proposed algorithm and compare it with other related clustering methods. |
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Keywords: | k-Medoids clustering Genetic algorithms Heuristics Cluster validity Davies-Bouldin index |
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