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FORTE
2008

Model Generation for Horn Logic with Stratified Negation

14 years 1 months ago
Model Generation for Horn Logic with Stratified Negation
Abstract. Model generation is an important formal technique for finding interesting instances of computationally hard problems. In this paper we study model generation over Horn logic under the closed world assumption extended with stratified negation. We provide a novel threestage algorithm that solves this problem: First, we reduce the relevant Horn clauses to a set of non-monotonic predicates. Second, we apply a fixed-point procedure to these predicates that reveals candidate solutions to the model generation problem. Third, we encode these candidates into a satisfiability problem that is evaluated with a state-of-the-art SMT solver. Our algorithm is implemented, and has been successfully applied to key problems arising in model-based design.
Ethan K. Jackson, Wolfram Schulte
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2008
Where FORTE
Authors Ethan K. Jackson, Wolfram Schulte
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