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Set Branching in Constraint Optimization

机译:在约束优化中设置分支

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摘要

Branch and bound is an effective technique for solving constraint optimization problems (COP's). However, its search space expands very rapidly as the domain sizes of the problem variables grow. In this paper, we present an algorithm that clusters the values of a variable's domain into sets. Branch and bound can then branch on these sets of values rather than on individual values, thereby reducing the branching factor of its search space. The aim of our clustering algorithm is to construct a collection of sets such that branching on these sets will still allow effective bounding. In conjunction with the reduced branching factor, the size of the explored search space is thus significantly reduced. We test our method and show empirically that it can yield significant performance gains over existing state-of-the-art techniques.
机译:分支机构和绑定是解决约束优化问题(COP')的有效技术。但是,由于问题变量的域尺寸增长,其搜索空间非常迅速地扩展。在本文中,我们介绍了一种算法,将变量域的值群体群化群化为集合。然后,分支和绑定可以分支在这些值集中而不是单个值,从而减少其搜索空间的分支因子。我们的聚类算法的目的是构造一个集合,使得这些集合上的分支仍然允许有效的限定。结合降低的分支因子,因此显着减少了探索的搜索空间的大小。我们测试我们的方法,并经验表明它可以在现有的最先进技术中产生显着的性能。

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