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Dynamic Constraint Satisfaction Problems: Relations among Search Strategies, Solution Sets and Algorithm Performance

机译:动态约束满足问题:搜索策略,解决方案集和算法性能之间的关系

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摘要

Previously we presented a new approach to solving dynamic constraint satisfaction problems (DCSPs) based on detection of major bottlenecks in a problem using a weighted-degree method called "random probing". The present work extends this approach and the analysis of the performance of this algorithm. We first show that despite a reduction in search effort, variability in search effort with random probing after problem perturbation is still pronounced, reflected in low correlations between performance measures on the original and perturbed problems. Using an analysis that separates effects based on promise and fail-firstness, we show that such variability is mostly due to variation in promise. Moreover, the stability of fail-firstness is greater when random probiing is used than with non-adaptive heuristics. We then present an enhancement of our original probing procedure, called "random probing with solution guidance", which improves average performance (as well as solution stability). Finally, we present an analysis of the nearest solution in the perturbed problem to the solution found for the original (base) problem. These results show why solution repair methods do poorly when problems are in a critical complexity region, since there may be no solutions similar to the original one in the perturbed problem. They also show that on average probing with solution guidance finds solutions with near-maximal stability under these conditions.
机译:以前,我们提出了一种新的方法来解决动态约束满足问题(DCSP),该方法基于使用权重方法(称为“随机探测”)的问题的主要瓶颈检测。本工作扩展了这种方法以及对该算法性能的分析。我们首先表明,尽管搜索工作量有所减少,但问题扰动后通过随机探测进行搜索的工作量仍然很明显,这反映在对原始问题和扰动问题的性能度量之间的相关性较低。使用基于诺言和失败优先的方法将影响分开的分析,我们表明这种可变性主要是由于诺言的变化所致。此外,与非自适应启发式算法相比,使用随机概率时故障优先的稳定性更高。然后,我们提出了对原始探测过程的增强,称为“带有解决方案指导的随机探测”,它可以提高平均性能(以及解决方案稳定性)。最后,我们对被摄动问题中最接近原始问题(基础)问题的解决方案进行分析。这些结果表明,当问题处于关键的复杂性区域时,解决方案修复方法的效果不佳,因为在受干扰的问题中可能没有与原始解决方案相似的解决方案。他们还表明,在解决方案指导下进行平均探测可以找到在这些条件下具有接近最大稳定性的解决方案。

著录项

  • 来源
    《Recent advances in constraints》|2009年|p.105-121|共17页
  • 会议地点 Barcelona(ES);Barcelona(ES)
  • 作者单位

    Cork Constraint Computation Centre and Department of Computer Science University College Cork, Cork, Ireland;

    Cork Constraint Computation Centre and Department of Computer Science University College Cork, Cork, Ireland;

    Cork Constraint Computation Centre and Department of Computer Science University College Cork, Cork, Ireland;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 信息处理(信息加工);
  • 关键词

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