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RANDOM SUBSETS SUPPORT LEARNING A MIXTURE OF HEURISTICS

机译:随机子集支持学习的混合体

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Problem solvers, both human and machine, have at their disposal many heuristics that may support effective search. The efficacy of these heuristics, however, varies with the problem class, and their mutual interactions may not be well understood. The long-term goal of our work is to learn how to select appropriately from among a large body of heuristics, and how to combine them into a mixture that works well on a specific class of problems. The principal result reported here is that randomly chosen subsets of heuristics can improve the identification of an appropriate mixture of heuristics. A self-supervised learner uses this method here to learn to solve constraint satisfaction problems quickly and effectively.
机译:无论是人还是机器,问题解决者都可以使用许多启发式方法来支持有效的搜索。但是,这些启发式方法的效果随问题类别的不同而不同,并且它们之间的相互影响可能还不太清楚。我们工作的长期目标是学习如何从大量的启发式方法中进行适当选择,以及如何将它们组合成对特定类别的问题都适用的混合方法。此处报告的主要结果是,随机选择的启发式方法子集可以改善对启发式方法适当组合的识别。一个自我监督的学习者在这里使用这种方法来学习快速有效地解决约束满足问题。

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