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Clustering via Ant Colonies: Parameter Analysis and Improvement of the Algorithm: Parameter Analysis and Improvement of the Algorithm

  • University of Costa Rica

Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

1 Scopus citations

Abstract

An ant colony optimization approach for partitioning a set of objects is proposed. In order to minimize the intra-variance, or within sum-of-squares, of the partitioned classes, we construct ant-like solutions by a constructive approach that selects objects to be put in a class with a probability that depends on the distance between the object and the centroid of the class (visibility) and the pheromone trail; the latter depends on the class memberships that have been defined along the iterations. The procedure is improved with the application of K-means algorithm in some iterations of the ant colony method. We performed a simulation study in order to evaluate the method with a Monte Carlo experiment that controls some sensitive parameters of the clustering problem. After some tuning of the parameters, the method has also been applied to some benchmark real-data sets. Encouraging results were obtained in nearly all cases.

Original languageEnglish
Title of host publicationBehaviormetrics
Subtitle of host publicationQuantitative Approaches to Human Behavior
PublisherSpringer
Pages265-282
Number of pages18
ISBN (Print)9789811526992, 9789811527005
DOIs
StatePublished - 2020

Publication series

NameBehaviormetrics: Quantitative Approaches to Human Behavior
Volume5
ISSN (Print)2524-4027
ISSN (Electronic)2524-4035

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