A New Probabilistic Algorithm for Approximate Model Counting
June 13, 2017 Β· Declared Dead Β· π PRUV@IJCAR
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Authors
Cunjing Ge, Feifei Ma, Tian Liu, Jian Zhang
arXiv ID
1706.03906
Category
cs.AI: Artificial Intelligence
Citations
6
Venue
PRUV@IJCAR
Last Checked
4 months ago
Abstract
Constrained counting is important in domains ranging from artificial intelligence to software analysis. There are already a few approaches for counting models over various types of constraints. Recently, hashing-based approaches achieve both theoretical guarantees and scalability, but still rely on solution enumeration. In this paper, a new probabilistic polynomial time approximate model counter is proposed, which is also a hashing-based universal framework, but with only satisfiability queries. A variant with a dynamic stopping criterion is also presented. Empirical evaluation over benchmarks on propositional logic formulas and SMT(BV) formulas shows that the approach is promising.
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