2021
DOI: 10.1007/978-981-15-9829-6_46
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An Overview of Crossover Techniques in Genetic Algorithm

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Cited by 5 publications
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“…The parents selected for crossover and creation for the next generation are picked by greedily selecting the top 10% of the solutions of the previous generation. To combine parents, an order-preserving random k-point crossover [18] operator is used. The mutation step is a combination of resampling n mut random genes c ij with probability p re and, with probability p add , adding samples from U(−1, 1) to n mut different genes and afterwards truncating them to stay in [0, 1].…”
Section: Genetic Algorithmmentioning
confidence: 99%
“…The parents selected for crossover and creation for the next generation are picked by greedily selecting the top 10% of the solutions of the previous generation. To combine parents, an order-preserving random k-point crossover [18] operator is used. The mutation step is a combination of resampling n mut random genes c ij with probability p re and, with probability p add , adding samples from U(−1, 1) to n mut different genes and afterwards truncating them to stay in [0, 1].…”
Section: Genetic Algorithmmentioning
confidence: 99%