Advanced tools and methods for treewidth-based problem solving

IF 1 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Markus Hecher
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引用次数: 0

Abstract

Abstract Computer programs, so-called solvers, for solving the well-known Boolean satisfiability problem (S at ) have been improving for decades. Among the reasons, why these solvers are so fast, is the implicit usage of the formula’s structural properties during solving. One of such structural indicators is the so-called treewidth, which tries to measure how close a formula instance is to being easy (tree-like). This work focuses on logic-based problems and treewidth-based methods and tools for solving them. Many of these problems are also relevant for knowledge representation and reasoning (KR) as well as artificial intelligence (AI) in general. We present a new type of problem reduction, which is referred to by decomposition-guided ( DG ). This reduction type forms the basis to solve a problem for quantified Boolean formulas (QBFs) of bounded treewidth that has been open since 2004. The solution of this problem then gives rise to a new methodology for proving precise lower bounds for a range of further formalisms in logic, KR, and AI. Despite the established lower bounds, we implement an algorithm for solving extensions of S at efficiently, by directly using treewidth. Our implementation is based on finding abstractions of instances, which are then incrementally refined in the process. Thereby, our observations confirm that treewidth is an important measure that should be considered in the design of modern solvers.
基于树宽度的问题解决的先进工具和方法
用于解决众所周知的布尔可满足性问题(S at)的计算机程序,即所谓的求解器,几十年来一直在不断改进。这些求解器速度如此之快的原因之一是在求解过程中隐式地使用了公式的结构性质。这种结构指标之一是所谓的树宽,它试图衡量公式实例与简单(树状)的接近程度。这项工作的重点是基于逻辑的问题和基于树宽度的方法和工具来解决它们。这些问题中的许多也与知识表示和推理(KR)以及人工智能(AI)相关。我们提出了一种新的问题约简方法,它被称为分解引导(DG)。这种约简类型构成了解决有界树宽的量化布尔公式(QBFs)问题的基础,该问题自2004年以来一直开放。这个问题的解决产生了一种新的方法,用于证明逻辑、KR和AI中一系列进一步形式的精确下界。尽管已经建立了下界,我们还是实现了一种算法,通过直接使用树宽来有效地求解S at的扩展。我们的实现基于查找实例的抽象,然后在过程中对其进行增量改进。因此,我们的观察证实,树宽是现代求解器设计中应该考虑的一个重要措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IT-Information Technology
IT-Information Technology COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.80
自引率
0.00%
发文量
29
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