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KohonAnts: A Self-Organizing Ant Algorithm for Clustering and Pattern Classification

18 March 2008
C. Fernandes
A. García
J. J. M. Guervós
Vitorino Ramos
J. L. Laredo
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Abstract

In this paper we introduce a new ant-based method that takes advantage of the cooperative self-organization of Ant Colony Systems to create a naturally inspired clustering and pattern recognition method. The approach considers each data item as an ant, which moves inside a grid changing the cells it goes through, in a fashion similar to Kohonen's Self-Organizing Maps. The resulting algorithm is conceptually more simple, takes less free parameters than other ant-based clustering algorithms, and, after some parameter tuning, yields very good results on some benchmark problems.

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