On Improving Local Search for Unsatisfiability

David Pereira
(Technical University of Lisbon)
Inês Lynce
(Technical University of Lisbon)
Steven Prestwich
(University College, Cork)

Stochastic local search (SLS) has been an active field of research in the last few years, with new techniques and procedures being developed at an astonishing rate. SLS has been traditionally associated with satisfiability solving, that is, finding a solution for a given problem instance, as its intrinsic nature does not address unsatisfiable problems. Unsatisfiable instances were therefore commonly solved using backtrack search solvers. For this reason, in the late 90s Selman, Kautz and McAllester proposed a challenge to use local search instead to prove unsatisfiability. More recently, two SLS solvers - Ranger and Gunsat - have been developed, which are able to prove unsatisfiability albeit being SLS solvers. In this paper, we first compare Ranger with Gunsat and then propose to improve Ranger performance using some of Gunsat's techniques, namely unit propagation look-ahead and extended resolution.

In Yves Deville and Christine Solnon: Proceedings 6th International Workshop on Local Search Techniques in Constraint Satisfaction (LSCS 2009), Lisbon, Portugal, 20 September 2009, Electronic Proceedings in Theoretical Computer Science 5, pp. 41–53.
Published: 8th October 2009.

ArXived at: https://dx.doi.org/10.4204/EPTCS.5.4 bibtex PDF

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