Theory of Evolutionary Algorithms

نویسندگان

  • Benjamin Doerr
  • Nikolaus Hansen
  • Jonathan L. Shapiro
  • Darrell Whitley
  • Rachael Morgan
  • L. Darrell Whitley
چکیده

This report documents the talks and discussions of Dagstuhl Seminar 13271 “Theory of Evolutionary Algorithms”. This seminar, now in its 7th edition, is the main meeting point of the highly active theory of randomized search heuristics subcommunities in Australia, Asia, North America and Europe. Topics intensively discussed include a complexity theory for randomized search heuristics, evolutionary computation in noisy settings, the drift analysis technique, and parallel evolutionary computation. Seminar 30. June to 05. July, 2013 – www.dagstuhl.de/13271 1998 ACM Subject Classification G.1.6 Optimization, F.2 Analysis of Algorithms and Problem Complexity

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تاریخ انتشار 2013