Multimodal multi-objective optimization: A preliminary study

  title={Multimodal multi-objective optimization: A preliminary study},
  author={J. J. Liang and C. T. Yue and B. Y. Qu},
  journal={2016 IEEE Congress on Evolutionary Computation (CEC)},
In real world applications, there are many multi-objective optimization problems. Most existing multi-objective optimization algorithms focus on improving the diversity, spread and convergence of the solutions in the objective space. Few works study the distribution of solutions in the decision space. In practical applications, some multi-objective problems have different Pareto sets with the same objective values and these problems are defined as multimodal multi-objective optimization… CONTINUE READING


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