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A New Probabilistic Algorithm for Approximate Model Counting

机译:一种新的近似模型计数概率算法

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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 success but still rely on solution enumeration. In this paper, a new probabilistic approximate model counter is proposed, which is also a hashing-based universal framework, but with only satisfiability queries. A dynamic stopping criteria, for the new algorithm, is presented, which has not been studied yet in previous works of hashing-based approaches. Although the new algorithm lacks theoretical guarantee, it works well in practice. Empirical evaluation over benchmarks on propositional logic formulas and SMT(BV) formulas shows that the approach is promising.
机译:约束计数在从人工智能到软件分析的域中是重要的。已经在各种类型的约束上计算模型的一些方法。最近,基于哈希的方法取得了成功,但仍然依赖解决方案枚举。在本文中,提出了一种新的概率近似模型计数器,其也是基于散列的普遍框架,而是仅具有可满足的查询。提出了一种用于新算法的动态停止标准,尚未在以前的基于散列方法的过程中进行的。虽然新算法缺乏理论保证,但它在实践中运用良好。对命题逻辑公式和SMT(BV)公式的基准测试的实证评价表明该方法是有前途的。

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