Parameter tuning of the firefly algorithm by three tuning methods: Standard Monte Carlo, quasi-Monte Carlo and latin hypercube sampling methods
Article
Joy, G., Huyck, C. and Yang, X. 2025. Parameter tuning of the firefly algorithm by three tuning methods: Standard Monte Carlo, quasi-Monte Carlo and latin hypercube sampling methods. Journal of Computational Science. https://doi.org/10.1016/j.jocs.2025.102588
Type | Article |
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Title | Parameter tuning of the firefly algorithm by three tuning methods: Standard Monte Carlo, quasi-Monte Carlo and latin hypercube sampling methods |
Authors | Joy, G., Huyck, C. and Yang, X. |
Abstract | There are many different nature-inspired algorithms in the literature, and almost all such algorithms have algorithm-dependent parameters that need to be tuned. The proper setting and parameter tuning should be carried out to maximize the performance of the algorithm under consideration. This work is the extension of the recent work on parameter tuning by Joy et al. (2024) presented at the International Conference on Computational Science (ICCS 2024), and the Firefly Algorithm (FA) is tuned using three different methods: the Monte Carlo method, the Quasi-Monte Carlo method and the Latin Hypercube Sampling. The FA with the tuned parameters is then used to solve a set of six different optimization problems, and the possible effect of parameter setting on the quality of the optimal solutions is analyzed. Rigorous statistical hypothesis tests have been carried out, including Student's t-tests, F-tests, non-parametric Friedman tests and ANOVA. Results show that the performance of the FA is not influenced by the tuning methods used. In addition, the tuned parameter values are largely independent of the tuning methods used. This indicates that the FA can be flexible and equally effective in solving optimization problems, and any of the three tuning methods can be used to tune its parameters effectively. |
Keywords | Algorithm; Firefly algorithm; Parameter tuning; Monte Carlo method; Latin hypercube sampling; Optimization |
Sustainable Development Goals | 9 Industry, innovation and infrastructure |
Middlesex University Theme | Creativity, Culture & Enterprise |
Research Group | Artificial Intelligence group |
Publisher | Elsevier |
Journal | Journal of Computational Science |
ISSN | 1877-7503 |
Electronic | 1877-7511 |
Publication dates | |
Online | 08 Apr 2025 |
Publication process dates | |
Submitted | 24 Sep 2024 |
Accepted | 27 Mar 2025 |
Deposited | 11 Apr 2025 |
Output status | Published |
Accepted author manuscript | License File Access Level Open |
Digital Object Identifier (DOI) | https://doi.org/10.1016/j.jocs.2025.102588 |
Language | English |
https://repository.mdx.ac.uk/item/2304zv
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