Pareto Front Estimation for Decision Making

@article{Giagkiozis2014ParetoFE,
  title={Pareto Front Estimation for Decision Making},
  author={Ioannis Giagkiozis and Peter J. Fleming},
  journal={Evolutionary Computation},
  year={2014},
  volume={22},
  pages={651-678}
}
The set of available multi-objective optimisation algorithms continues to grow. This fact can be partially attributed to their widespread use and applicability. However, this increase also suggests several issues remain to be addressed satisfactorily. One such issue is the diversity and the number of solutions available to the decision maker (DM). Even for algorithms very well suited for a particular problem, it is difficult—mainly due to the computational cost—to use a population large enough… CONTINUE READING
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