Temporal Answer Set Programming
September 14, 2020 Β· Declared Dead Β· π International Conference on Logic Programming
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Authors
Felicidad Aguado, Pedro Cabalar, Martin Dieguez, Gilberto Perez, Torsten Schaub, Anna Schuhmann, Concepcion Vidal
arXiv ID
2009.06544
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LO
Citations
4
Venue
International Conference on Logic Programming
Last Checked
4 months ago
Abstract
We present an overview on Temporal Logic Programming under the perspective of its application for Knowledge Representation and declarative problem solving. Such programs are the result of combining usual rules with temporal modal operators, as in Linear-time Temporal Logic (LTL). We focus on recent results of the non-monotonic formalism called Temporal Equilibrium Logic (TEL) that is defined for the full syntax of LTL, but performs a model selection criterion based on Equilibrium Logic, a well known logical characterization of Answer Set Programming (ASP). We obtain a proper extension of the stable models semantics for the general case of arbitrary temporal formulas. We recall the basic definitions for TEL and its monotonic basis, the temporal logic of Here-and-There (THT), and study the differences between infinite and finite traces. We also provide other useful results, such as the translation into other formalisms like Quantified Equilibrium Logic or Second-order LTL, and some techniques for computing temporal stable models based on automata. In a second part, we focus on practical aspects, defining a syntactic fragment called temporal logic programs closer to ASP, and explain how this has been exploited in the construction of the solver TELINGO.
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