Learning in Multiobjective Optimization

نویسندگان

  • Salvatore Greco
  • Joshua Knowles
  • Kaisa Miettinen
  • Eckart Zitzler
  • Kari Silvennoinen
  • Jyrki Wallenius
  • José Carlos Ferreira
  • Carlos M. Fonseca
چکیده

Our vision is for a seminar that encourages the free exchange of ideas around the organizing subject of learning in MCDM and multiobjective optimization. The following programme provides a skeleton of activities we propose. Participants should suggest amendments to this programme as the week progresses. We encourage the spontaneous formation of working and discussion groups among the participants. We hope you find the week most stimulating !

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تاریخ انتشار 2012