Advanced Tools and Methods for Treewidth-Based Problem Solving -- Extended Abstract
August 24, 2022 Β· Declared Dead Β· π Frontiers in Artificial Intelligence and Applications
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Authors
Markus Hecher
arXiv ID
2208.11340
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CC,
cs.DB,
cs.DS,
cs.LO
Citations
1
Venue
Frontiers in Artificial Intelligence and Applications
Last Checked
4 months ago
Abstract
Computer programs, so-called solvers, for solving the well-known Boolean satisfiability problem (Sat) 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 Sat 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.
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