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Evolutionary Computation

Winter 2010, Vol. 18, No. 4, Pages 617-633
(doi: 10.1162/EVCO_a_00003)
© 2010 by the Massachusetts Institute of Technology
Approximating Covering Problems by Randomized Search Heuristics Using Multi-Objective Models
Article PDF (175.14 KB)
Abstract

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 explorations on this subject. We consider the approximation ability of randomized search heuristics 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, no good approximation can be achieved within the expected polynomial time. Examining the more general SetCover problem, we show that optimal solutions can be approximated within a logarithmic factor of the size of the ground set, using the multi-objective approach, while the approximation quality obtainable by the single-objective approach in expected polynomial time may be arbitrarily bad.