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Automated selection of appropriate pheromone representations in Ant Colony Optimisation

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posted on 2024-07-12, 13:41 authored by James Montgomery, Marcus Randall, Tim HendtlassTim Hendtlass
Ant colony optimization (ACO) is a constructive metaheuristic that uses an analogue of ant trail pheromones to learn about good features of solutions. Critically, the pheromone representation for a particular problem is usually chosen intuitively rather than by following any systematic process. In some representations, distinct solutions appear multiple times, increasing the effective size of the search space and potentially misleading ants as to the true learned value of those solutions. In this article, we present a novel system for automatically generating appropriate pheromone representations, based on the characteristics of the problem model that ensures unique pheromone representation of solutions. This is the first stage in the development of a generalized ACO system that could be applied to a wide range of problems with little or no modification. However, the system we propose may be used in the development of any problem-specific ACO algorithm.

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ISSN

1064-5462

Journal title

Artificial Life

Volume

11

Issue

3

Pagination

22 pp

Publisher

MIT Press

Copyright statement

Copyright © 2005 Massachusetts Institute of Technology. Paper is reproduced in accordance with the copyright policy of the publisher.

Language

eng

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