Advancing Lazy-Grounding ASP Solving Techniques -- Restarts, Phase Saving, Heuristics, and More
August 08, 2020 Β· Declared Dead Β· π Theory and Practice of Logic Programming
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Authors
Antonius Weinzierl, Richard Taupe, Gerhard Friedrich
arXiv ID
2008.03526
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LO
Citations
18
Venue
Theory and Practice of Logic Programming
Last Checked
4 months ago
Abstract
Answer-Set Programming (ASP) is a powerful and expressive knowledge representation paradigm with a significant number of applications in logic-based AI. The traditional ground-and-solve approach, however, requires ASP programs to be grounded upfront and thus suffers from the so-called grounding bottleneck (i.e., ASP programs easily exhaust all available memory and thus become unsolvable). As a remedy, lazy-grounding ASP solvers have been developed, but many state-of-the-art techniques for grounded ASP solving have not been available to them yet. In this work we present, for the first time, adaptions to the lazy-grounding setting for many important techniques, like restarts, phase saving, domain-independent heuristics, and learned-clause deletion. Furthermore, we investigate their effects and in general observe a large improvement in solving capabilities and also uncover negative effects in certain cases, indicating the need for portfolio solving as known from other solvers. Under consideration for acceptance in TPLP.
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