Interaction enhanced imperialist competitive algorithms (Q1736524)
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scientific article; zbMATH DE number 7042134
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Interaction enhanced imperialist competitive algorithms |
scientific article; zbMATH DE number 7042134 |
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Interaction enhanced imperialist competitive algorithms (English)
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26 March 2019
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Summary: Imperialist Competitive Algorithm (ICA) is a new population-based evolutionary algorithm. It divides its population of solutions into several sub-populations, and then searches for the optimal solution through two operations: assimilation and competition. The assimilation operation moves each non-best solution (called \textit{colony}) in a sub-population toward the best solution (called \textit{imperialist}) in the same sub-population. The competition operation removes a colony from the weakest sub-population and adds it to another sub-population. Previous work on ICA focuses mostly on improving the assimilation operation or replacing the assimilation operation with more powerful meta-heuristics, but none focuses on the improvement of the competition operation. Since the competition operation simply moves a colony (\textit{i.e.}, an inferior solution) from one sub-population to another sub-population, it incurs weak interaction among these sub-populations. This work proposes Interaction Enhanced ICA that strengthens the interaction among the imperialists of all sub-populations. The performance of Interaction Enhanced ICA is validated on a set of benchmark functions for global optimization. The results indicate that the performance of Interaction Enhanced ICA is superior to that of ICA and its existing variants.
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imperialist competition algorithm
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island model genetic algorithm
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optimization
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