New Uncertainty Handling Strategies in Multi-objective Evolutionary Optimization

@inproceedings{Vo2010NewUH,
  title={New Uncertainty Handling Strategies in Multi-objective Evolutionary Optimization},
  author={Thomas Vo{\ss} and Heike Trautmann and Christian Igel},
  booktitle={PPSN},
  year={2010}
}
Sincemany real-world optimization problems are noisy, vector optimization algorithms that can cope with noise and uncertainty are required. We propose new, robust selection strategies for evolutionarymultiobjective optimization in the presence of noise.We apply new measures of uncertainty for estimating the recently introduced Pareto-dominance for uncertain and noisy environments (PDU). The first measure is the interquartile range of the outcomes of repeated function evaluations. The second is… CONTINUE READING

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