A New Crossover Operator for Genetic Algorithms
نویسندگان
چکیده
Starting from a mathematical reinterpretation of the classical crossover operator, a new type of crossover is introduced. The proposed new crossover operator gives better performances than the classical 1 point, 2 point or uniform crossover operators. In the paper a theorical investigation of the behaviour of the new crossover is presented. In comparison to the classical crossover operator, it allows a better exploration of the searching space and gives better findings. Some comparative results relative to the optimization of test functions taken from literature are given.
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