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Solution bias in ant colony optimisation: lessons for selecting pheromone models
Citation
Montgomery, J and Randall, M and Hendtlass, T, Solution bias in ant colony optimisation: lessons for selecting pheromone models, Computers and Operations Research, 35, (9) pp. 2728-2749. ISSN 0305-0548 (2008) [Refereed Article]
Copyright Statement
Copyright 2008 Elsevier
DOI: doi:10.1016/j.cor.2006.12.014
Abstract
Ant colony optimisation is a constructive metaheuristic in which solutions are built probabilistically influenced by the parameters
of a pheromone model—an analogue of the trail pheromones used by real ants when foraging for food. Recent studies have uncovered
the presence of biases in the solution construction process, the existence and nature of which depend on the characteristics of the
problem being solved. The presence of these solution construction biases induces biases in the pheromone model used, so selecting
an appropriate model is highly important. The first part of this paper presents new findings bridging biases due to construction
with biases in pheromone models. Novel approaches to the prediction of this bias are developed and used with the knapsack and
generalised assignment problems. The second part of the paper deals with the selection of appropriate pheromone models when
detailed knowledge of their biases is not available. Pheromone models may be derived either from characteristics of the way
solutions are represented by the algorithm or characteristics of the solutions represented, which are often quite different. Recently
it has been suggested that the latter is more appropriate. The relative performance of a number of alternative pheromone models for
six well-known combinatorial optimisation problems is examined to test this hypothesis. Results suggest that, in general, modelling
characteristics of solutions (rather than their representations) does lead to the best performance in ACO algorithms. Consequently,
this principle may be used to guide the selection of appropriate pheromone models in problems to which ACO has not yet been
applied.
Item Details
Item Type: | Refereed Article |
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Keywords: | ant colony optimisation, constructive metaheuristic, pheromone model, solution bias |
Research Division: | Information and Computing Sciences |
Research Group: | Machine learning |
Research Field: | Neural networks |
Objective Division: | Expanding Knowledge |
Objective Group: | Expanding knowledge |
Objective Field: | Expanding knowledge in the information and computing sciences |
UTAS Author: | Montgomery, J (Dr James Montgomery) |
ID Code: | 92135 |
Year Published: | 2008 |
Web of Science® Times Cited: | 10 |
Deposited By: | Information and Communication Technology |
Deposited On: | 2014-06-06 |
Last Modified: | 2015-02-12 |
Downloads: | 0 |
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