在没有建模的情况下解决约束问题

C. Bessiere, Rémi Coletta, Nadjib Lazaar
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引用次数: 4

摘要

我们研究如何在不建模的情况下找到约束问题的解。Conacq或ModelSeeker等约束获取系统无法解决问题的单个实例,因为它们需要积极的例子来学习。最近用于约束获取的QuAcq算法不需要正例来学习约束网络。因此,它能够在不建模的情况下解决约束问题:只要一个完整的示例被用户分类为正,我们就可以退出QuAcq。在本文中,我们提出了ASK&SOLVE,这是一个基于启发的求解器,它试图在学习和求解之间找到最佳折衷,以尽快收敛于解决方案。我们提出了几个加速ASK&SOLVE的策略。最后,我们给出了一个实验评估,表明我们的方法提高了目前的技术水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solve a Constraint Problem without Modeling It
We study how to find a solution to a constraint problem without modeling it. Constraint acquisition systems such as Conacq or ModelSeeker are not able to solve a single instance of a problem because they require positive examples to learn. The recent QuAcq algorithm for constraint acquisition does not require positive examples to learn a constraint network. It is thus able to solve a constraint problem without modeling it: we simply exit from QuAcq as soon as a complete example is classified as positive by the user. In this paper, we propose ASK&SOLVE, an elicitation-based solver that tries to find the best trade off between learning and solving to converge as soon as possible on a solution. We propose several strategies to speed-up ASK&SOLVE. Finally we give an experimental evaluation that shows that our approach improves the state of the art.
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