The notion of reparametrizations of Weighted CSPs (WCSPs) (also known as equivalence-preserving transformations of WCSPs) is well-known and finds its use in many algorithms to approximate or bound the optimal WCSP value. In contrast, the concept of super-reparametrizations (which are changes of the weights that keep or increase the WCSP objective for every assignment) was already proposed but never studied in detail. To fill this gap, we present a number of theoretical properties of super-reparametrizations and compare them to those of reparametrizations. Furthermore, we propose a framework for computing upper bounds on the optimal value of the (maximization version of) WCSP using super-reparametrizations. We show that it is in principle possible to employ arbitrary (under some technical conditions) constraint propagation rules to improve the bound. For arc consistency in particular, the method reduces to the known Virtual AC (VAC) algorithm. Newly, we implemented the method for singleton arc consistency (SAC) and compared it to other strong local consistencies in WCSPs on a public benchmark. The results show that the bounds obtained from SAC are superior for many instance groups.
翻译:为填补这一空白,我们提出了一些超平衡法的理论属性,并将其与重新平衡法的理论属性进行比较。此外,我们提出了一个框架,用于利用超平衡法对超平衡法的最佳值(最大化版)进行计算。我们表明,原则上可以采用任意(在某些技术条件下)的制约传播规则来改进约束性。具体来说,为了达到合理一致性,我们采用了单子统一法的方法(SAC),并将它与其他强力的SWC基准进行比较。