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Local and Global Complete Solution Learning Methods for QBf

机译:QBF的本地和全球完整的解决方案学习方法

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Solvers for Quantified Boolean Formulae (QBF) use many analogues of technique from SAT. A significant amount of work has gone into extending conflict based techniques such as conflict learning to solution learning, which is irrelevant in SAT but can play a large role in success in QBF. Unfortunately, solution learning techniques have not been highly successful to date. We argue that one reason for this is that solution learning techniques have been 'incomplete'. That is, not all the information implied in a solution is learnt. We introduce two new techniques for learning as much as possible from solutions, and we call them complete methods. The two methods contrast in how long they keep information. One, Complete Local Solution Learning, discards solutions on backtracking past a previous existential variable. The other, Complete Global Solution Learning, keeps solutions indefinitely. Our detailed experimental analysis suggests that both can improve search over standard solution learning, while the local method seems to offer a more suitable tradeoff than global learning.
机译:用于量化布尔公式的求解器(QBF)使用SAT的许多技术类似物。大量的工作已经进入基于冲突的技术,例如冲突学习的解决方案学习,这在饱和区内无关,但可以在QBF中取得成功作用。不幸的是,解决方案学习技巧迄今尚未成功。我们争辩说,这是一个原因是解决方案学习技术已经“不完整”。也就是说,并非了解解决方案中暗示的所有信息。我们从解决方案中尽可能多地学习了两种新技术,我们称之为完整的方法。两种方法在他们保留了多长时间的对比。一个,完整的本地解决方案学习,丢弃回溯到以前存在的变量的解决方案。另一个完整的全球解决方案学习,无限期地保持解决方案。我们的详细实验分析表明,两者都可以改善标准解决方案学习的搜索,而当地方法似乎提供比全球学习更合适的权衡。

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