对于有值约束满足问题没有很好的记录

Pierre Dago, G. Verfaillie
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引用次数: 26

摘要

在经典约束满足问题(csp)的框架中,回溯树搜索与学习方法相结合,具有双重优势:对于静态求解,它避免了冗余探索,提高了搜索速度;对于动态求解(在问题稍微改变之后),它重用以前的搜索来快速构建新的解决方案。回溯推理是对某些组合选择的拒绝。没有好的录音记住这些选择是为了不复制。我们的目标是在更广泛的有值CSP框架(VCSP)中使用无好记录来增强分支定界算法。因此,nogoods用于增加分支所使用的下界,并用于修剪搜索。这个问题导致了“有价值的无商品”的定义及其使用。本研究特别侧重于需要特别发展的惩罚和动态vcsp。然而,我们的结果将Nogood记录扩展到一般的VCSP框架。
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Nogood recording for valued constraint satisfaction problems
In the frame of classical constraint satisfaction problems (CSPs), the backtrack tree search, combined with learning methods, presents a double advantage: for static solving, it improves the search speed by avoiding redundant explorations; for dynamic solving (after a slight change of the problem) it reuses the previous searches to build a new solution quickly. Backtrack reasoning concludes the rejection of certain combinatorial choices. Nogood Recording memorizes these choices in order to not reproduce. We aim to use Nogood Recording in the wider scope of the Valued CSP framework (VCSP) to enhance the branch and bound algorithm. Therefore, nogoods are used to increase the lower bound used by the branch and bound to prune the search. This issue leads to the definition of the "Valued Nogoods" and their use. This study focuses particularly on penalty and dynamic VCSPs which require special developments. However our results give an extension of the Nogood Recording to the general VCSP framework.
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