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Solutions for Hard and Soft Constraints Using Optimized Probabilistic Satisfiability

机译:使用优化的概率可满足性的硬约束和软约束解决方案

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Practical problems often combine real-world hard constraints with soft constraints involving preferences, uncertainties or flexible requirements. A probability distribution over the models that meet the hard constraints is an answer to such problems that is in the spirit of incorporating soft constraints. We propose a method using SAT-based reasoning, probabilistic rear soiling and linear programming that computes such a distribution when soft constraints are interpreted as constraints whose violation is bound by a given probability. The method, called Optimized Probabilistic Satisfiability (oPSAT), consists of a two-phase computation of a probability distribution over the set of valuations of a SAT formula. Algorithms for both phases are presented and their complexity is discussed. We also describe an application of the oPSAT technique to the problem of combinatorial materials discovery.
机译:实际问题通常将现实世界的硬约束与涉及偏好,不确定性或灵活要求的软约束结合在一起。满足硬约束条件的模型上的概率分布是对此类问题的一种解决方案,本着合并软约束条件的精神。我们提出一种使用基于SAT的推理,概率后方污染和线性规划的方法,该方法在将软约束解释为违规性受给定概率约束的约束时计算这种分布。该方法称为优化概率可满足性(oPSAT),包括对SAT公式的一组评估值进行概率分布的两阶段计算。提出了两个阶段的算法,并讨论了它们的复杂性。我们还描述了oPSAT技术在组合材料发现问题中的应用。

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