QBF as an Alternative to Courcelle's Theorem
May 22, 2018 Β· Declared Dead Β· π International Conference on Theory and Applications of Satisfiability Testing
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Authors
Michael Lampis, Stefan Mengel, Valia Mitsou
arXiv ID
1805.08456
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.DS
Citations
19
Venue
International Conference on Theory and Applications of Satisfiability Testing
Last Checked
4 months ago
Abstract
We propose reductions to quantified Boolean formulas (QBF) as a new approach to showing fixed-parameter linear algorithms for problems parameterized by treewidth. We demonstrate the feasibility of this approach by giving new algorithms for several well-known problems from artificial intelligence that are in general complete for the second level of the polynomial hierarchy. By reduction from QBF we show that all resulting algorithms are essentially optimal in their dependence on the treewidth. Most of the problems that we consider were already known to be fixed-parameter linear by using Courcelle's Theorem or dynamic programming, but we argue that our approach has clear advantages over these techniques: on the one hand, in contrast to Courcelle's Theorem, we get concrete and tight guarantees for the runtime dependence on the treewidth. On the other hand, we avoid tedious dynamic programming and, after showing some normalization results for CNF-formulas, our upper bounds often boil down to a few lines.
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