Selection Operators Based on Maximin Fitness Function for Multi-Objective Evolutionary Algorithms
نویسندگان
چکیده
We propose three operators based on MFF. The first uses MFF. The second uses MFF when applies Maximin-Constraint and uses modified MFF when applies Maximin-Clustering. The third uses modified MFF. According to the results, the three operators are competitive to solve multi-objective optimization problems having both low dimensionality (two or three) and high dimensionality (more than three) in objective function space. References
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