Temporal Logic Programs with Variables
September 19, 2016 Β· Declared Dead Β· + Add venue
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Authors
Felicidad Aguado, Pedro Cabalar, MartΓn DiΓ©guez, Gilberto PΓ©rez, ConcepciΓ³n Vidal
arXiv ID
1609.05811
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LO
Citations
0
Last Checked
4 months ago
Abstract
In this note we consider the problem of introducing variables in temporal logic programs under the formalism of "Temporal Equilibrium Logic" (TEL), an extension of Answer Set Programming (ASP) for dealing with linear-time modal operators. To this aim, we provide a definition of a first-order version of TEL that shares the syntax of first-order Linear-time Temporal Logic (LTL) but has a different semantics, selecting some LTL models we call "temporal stable models". Then, we consider a subclass of theories (called "splittable temporal logic programs") that are close to usual logic programs but allowing a restricted use of temporal operators. In this setting, we provide a syntactic definition of "safe variables" that suffices to show the property of "domain independence" -- that is, addition of arbitrary elements in the universe does not vary the set of temporal stable models. Finally, we present a method for computing the derivable facts by constructing a non-temporal logic program with variables that is fed to a standard ASP grounder. The information provided by the grounder is then used to generate a subset of ground temporal rules which is equivalent to (and generally smaller than) the full program instantiation.
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