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Characterization of a New Restart Strategy for Randomized Backtrack Search

机译:用于随机回溯搜索的新重启策略的特征

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We propose an improved restart strategy for randomized backtrack search, and evaluate its performance by comparing to other heuristic and stochastic search techniques for solving random problems and a tight real-world resource allocation problem. The restart strategy proposed by Gomes et al. [1] requires the specification of a cutoff value determined from an overall profile of the cost of search for solving the problem. When no such profile is known, the cutoff value is chosen by trial-and-error. The Randomization and Geometric Restart (RGR) proposed by Walsh does not rely on a cost profile but determines the cutoff value as a function of a constant parameter and the number of variables in the problem , Unlike these strategies, which have fixed restart schedules, our technique (RDGR) dynamically adapts the value of the cutoff parameter to the results of the search process. Our experiments investigate the behavior of these techniques using the cumulative distribution of the solutions, over different run-time durations, values of the cutoff, and problem types. We show that distinguishing between solvable and over-constrained problem instances yields new insights on the relative performance of the search techniques tested. We propose to use this characterization as a basis for building new strategies of cooperative, hybrid search.
机译:我们提出了一种改进的重启策略,用于随机回溯搜索,并通过与其他启发式和随机搜索技术进行比较来评估其用于解决随机问题和紧密的实际资源分配问题的动态和随机搜索技术。 Gomes等人提出的重启策略。 [1]要求从搜索成本的整体轮廓确定的截止值的规范来解决问题。当没有已知这样的配置文件时,通过试验和错误选择截止值。 Walsh提出的随机化和几何重启(RGR)不依赖于成本简档,而是根据这些策略,确定截止值作为问题的常量参数和变量的数量,与这些策略具有固定的重启时间表,我们技术(RDGR)动态地使截止参数的值与搜索过程的结果相互作用。我们的实验使用解决方案的累积分布,在不同的运行时间持续时间,截止值和问题类型的情况下调查这些技术的行为。我们表明,可靠性和过度约束的问题实例之间的区别产生了对测试测试技术的相对性能的新见解。我们建议使用此表征作为建立合作,混合搜索的新策略的基础。

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