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Algorithm Configuration: Learning Policies for the Quick Termination of Poor Performers

机译:算法配置:学习策略,以快速终止表现欠佳的人

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One way to speed up the algorithm configuration task is to use short runs instead of long runs as much as possible, but without discarding the configurations that eventually do well on the long runs. We consider the problem of selecting the top performing configurations of Conditional Markov Chain Search (CMCS), a general algorithm schema that includes, for example, VNS. We investigate how the structure of performance on short tests links with those on long tests, showing that significant differences arise between test domains. We propose a 'performance envelope' method to exploit the links; that learns when runs should be terminated, but that automatically adapts to the domain.
机译:加快算法配置任务的一种方法是尽可能使用短期运行,而不是长期运行,但不丢弃最终在长期运行中表现良好的配置。我们考虑选择条件马尔可夫链搜索(CMCS)的最高性能配置的问题,该条件是包括例如VNS的通用算法架构。我们调查了短期测试的性能结构与长期测试的性能结构之间的联系,显示出测试域之间出现了显着差异。我们提出了一种“性能包络”方法来利用这些链接。了解何时终止运行的信息,但会自动适应域。

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