A Novel Collective Crossover Operator for Genetic Algorithms
Citation
KİRAZ, Berna, Azam Asilian BİDGOLİ, Hossein EBRAHİMPOUR-KOMLEH & Shahryar RAHNAMAYAN. "A Novel Collective Crossover Operator for Genetic Algorithms". IEEE International Conference on Systems, Man, and Cybernetics (SMC), 9282841 (2020): 4204-4209.Abstract
Crossover is the main genetic operator which influences
the power of evolutionary algorithms. Among a variety
of crossover operators, there has been a growing interest in
multi-parent crossover operators in evolutionary computation. The
main motivation of those schemes is establishing comprehensive
collective collaboration of more than two chromosomes in the
population to generate a new offspring. In this paper, a novel allparent
crossover operator called collective crossover for genetic
algorithm is proposed. In this method, all individuals in the
current population are involved in recombination part and one
offspring is generated. The contribution of each individuals is
defined based on its quality in terms of fitness value. The
performance of the collective crossover operator is tested on CEC-
2017 benchmark functions. The results revealed that the proposed
crossover operator performs better when compared to well-known
two-parent crossover operators including one-point and two-point
crossovers. In addition, the differences between collective crossover
and the other crossover operators are statistically significant for
the most cases.