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AAAI 2005

Generalized NoGoods in CSPs

Conference Paper Constraint Satisfaction and Satisfiability Artificial Intelligence

Abstract

Although nogood learning in CSPs and clause learning in SAT are formally equivalent, nogood learning has not been as successful a technique in CSP solvers as clause learning has been for SAT solvers. We show that part of the reason for this discrepancy is that nogoods in CSPs (as standardly defined) are too restrictive. In this paper we demonstrate that these restrictions can be lifted so that a CSP solver can learn more general and powerful nogoods. Nogoods generalized in this manner yield a provably more powerful CSP solver. We also demonstrate how generalized nogoods facilitate learning useful nogoods from global constraints. Finally, we demonstrate empirically that generalized nogoods can yield significant improvements in performance.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
311789328313766694