求解约束满足问题的递归分割、求解和连接策略

J. C. Ortíz-Bayliss, Dulce Jaqueline Magaña-Lozano, H. Terashima-Marín, S. E. Conant-Pablos
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引用次数: 0

摘要

约束满足是一个在工业和学术环境中反复出现的问题。这个特殊问题的重要性依赖于这样一个事实,即许多其他问题域可以表示为约束满足问题。由于它们的组合性质,这个问题的实例通常很难解决,因为它们通常需要变量数量的指数时间。过去已经提出了各种解决策略来解决这个问题,其中最重要的两个趋势是局部搜索和基于回溯的方法。本文提出了一种新的求解策略,该策略将约束满足实例划分为可独立求解的小实例,然后使用它们的解来求解原实例。此过程以递归方式执行,包括基于本地搜索和基于回溯的求解器。在从公共存储库获取的一组基准实例上对所建议的方法进行测试,在单独应用的本地搜索和基于回溯的求解器方面获得了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Recursive Split, Solve, and Join Strategy for Solving Constraint Satisfaction Problems
Constraint satisfaction is a recurrent problem found in both industrial and academic environments. The importance of this particular problem relies on the fact that many other problem domains can be represented as constraint satisfaction problems. The instances of this problem are usually difficult to solve due to their combinatorial nature, as they often require an exponential time in the number of variables. Various solving strategies have been proposed to tackle this problem in the past, being the two most important trends local search and backtracking-based methods. In this paper we propose a novel solving strategy that partitions constraint satisfaction instances into smaller ones that can be independently solved and later, uses their solutions to solve the original instance. This process is performed in a recursive fashion, including both a local search-based and a backtracking-based solver. Tests of the proposed approach on a set of benchmark instances taken from public repositories obtained encouraging results with respect to both local search and backtracking-based solvers applied in isolation.
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