Probing-Based Variable Selection Heuristics for NCSPs

Víctor Reyes, Ignacio Araya
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引用次数: 1

Abstract

Interval branch & bound solvers are commonly used for solving numerical constraint satisfaction problems. They alternate filtering/contraction and branching steps in order to find small boxes containing all the solutions of the problem. The branching basically consists in generating two sub problems by dividing the domain of one variable into two. The selection of this variable is the topic of this work. Several heuristics have been proposed so far, most of them using local information from the current node (e.g., Domain sizes, partial derivative images over the current box, etc). We propose instead an approach based on past information. This information is provided by a preprocessing phase of the algorithm (probing) and is used during the search. In simple words, our algorithm attempts to identify the most important variables in a series of cheap test runs. As a result of probing, the variables are weighted. These weights are then considered by the selection heuristic during the search. Experiments stress the interest of using techniques based on past information in interval branch & bound solvers.
基于探测的ncsp变量选择启发式算法
区间分支定界法是求解数值约束满足问题的常用方法。他们交替过滤/收缩和分支步骤,以找到包含问题所有解决方案的小盒子。分支基本上包括通过将一个变量的定义域分成两个来生成两个子问题。该变量的选取是本工作的主题。到目前为止,已经提出了几种启发式方法,其中大多数使用当前节点的局部信息(例如,域大小,当前框上的偏导数图像等)。我们建议采用一种基于过去信息的方法。该信息由算法的预处理阶段(探测)提供,并在搜索期间使用。简而言之,我们的算法试图在一系列廉价的测试运行中识别最重要的变量。作为探测的结果,变量被加权。然后在搜索过程中由选择启发式算法考虑这些权重。实验强调了在区间分支和界解中使用基于过去信息的技术的兴趣。
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