Gulayeva et al., 2021 - Google Patents
Experimental analysis of multinational genetic algorithm and its modificationsGulayeva et al., 2021
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- 3008406919550816142
- Author
- Gulayeva N
- Yaremko S
- Publication year
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Context. Niching genetic algorithms are one of the most popular approaches to solve multimodal optimization problems. When classifying niching genetic algorithms it is possible to select algorithms explicitly analyzing topography of fitness function landscape; …
- 238000006011 modification reaction 0 title abstract description 33
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