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Experiments with Reduction Finding

机译:还原发现实验

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摘要

Reductions axe perhaps the most useful tool in complexity theory and, naturally, it is in general undecidable to determine whether a reduction exists between two given decision problems. However, asking for a reduction on inputs of bounded size is essentially a Σ_2~p problem and can in principle be solved by ASP, QBF, or by iterated calls to SAT solvers. We describe our experiences developing and benchmarking automatic reduction finders. We created a dedicated reduction finder that does counter-example guided abstraction refinement by iteratively calling either a SAT solver or BDD package. We benchmark its performance with different SAT solvers and report the tradeoffs between the SAT and BDD approaches. Further, we compare this reduction finder with the direct approach using a number of QBF and ASP solvers. We describe the tradeoffs between the QBF and ASP approaches and show which solvers perform best on our Σ_2~p instances. It turns out that even state-of-the-art solvers leave a large room for improvement on problems of this kind. We thus provide our instances as a benchmark for future work on Σ_2~p solvers.
机译:约简可能是复杂性理论中最有用的工具,自然地,要确定在两个给定的决策问题之间是否存在约简,通常是不确定的。但是,要求减少有界大小的输入实质上是一个Σ_2〜p问题,并且原则上可以通过ASP,QBF或通过迭代调用SAT解算器来解决。我们描述了我们开发和基准化自动还原发现器的经验。我们创建了一个专用的约简查找器,通过迭代调用SAT求解器或BDD包来进行反示例指导的抽象细化。我们使用不同的SAT求解器对它的性能进行基准测试,并报告SAT和BDD方法之间的权衡。此外,我们将此还原查找程序与使用大量QBF和ASP求解器的直接方法进行了比较。我们描述了QBF和ASP方法之间的折衷,并说明了哪些求解器在Σ_2〜p实例上表现最佳。事实证明,即使是最先进的求解器,在此类问题上也仍有很大的改进空间。因此,我们提供了实例作为Σ_2〜p解算器未来工作的基准。

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