Design and Management of Complex Technical Processes and Systems by means of Computational Intelligence Methods Approximating Covering Problems by Randomized Search Heuristics Using Multi-Objective Models

نویسندگان

  • Tobias Friedrich
  • Jun He
  • Nils Hebbinghaus
  • Frank Neumann
  • Carsten Witt
چکیده

The main aim of randomized search heuristics is to produce good approximations of optimal solutions within a small amount of time. In contrast to numerous experimental results, there are only a few theoretical results on this subject. We consider the approximation ability of randomized search for the class of covering problems and compare single-objective and multi-objective models for such problems. For the VertexCover problem, we point out situations where the multi-objective model leads to a fast construction of optimal solutions while in the single-objective case even no good approximation can be achieved within expected polynomial time. Examining the more general SetCover problem we show that optimal solutions can be approximated within a factor of log n, where n is the problem dimension, using the multi-objective approach while the approximation quality obtainable by the single-objective approach in expected polynomial time may be arbitrarily bad.

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تاریخ انتشار 2007