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The Ethereal
LTLf+ and PPLTL+: Extending LTLf and PPLTL to Infinite Traces
November 14, 2024 ยท The Ethereal ยท ๐ International Joint Conference on Artificial Intelligence
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Authors
Benjamin Aminof, Giuseppe De Giacomo, Sasha Rubin, Moshe Y. Vardi
arXiv ID
2411.09366
Category
cs.LO: Logic in CS
Cross-listed
cs.AI,
cs.FL
Citations
4
Venue
International Joint Conference on Artificial Intelligence
Last Checked
1 month ago
Abstract
We introduce LTLf+ and PPLTL+, two logics to express properties of infinite traces, that are based on the linear-time temporal logics LTLf and PPLTL on finite traces. LTLf+/PPLTL+ use levels of Manna and Pnueli's LTL safety-progress hierarchy, and thus have the same expressive power as LTL. However, they also retain a crucial characteristic of the reactive synthesis problem for the base logics: the game arena for strategy extraction can be derived from deterministic finite automata (DFA). Consequently, these logics circumvent the notorious difficulties associated with determinizing infinite trace automata, typical of LTL reactive synthesis. We present DFA-based synthesis techniques for LTLf+/PPLTL+, and show that synthesis is 2EXPTIME-complete for LTLf+ (matching LTLf) and EXPTIME-complete for PPLTL+ (matching PPLTL). Notably, while PPLTL+ retains the full expressive power of LTL, reactive synthesis is EXPTIME-complete instead of 2EXPTIME-complete. The techniques are also adapted to optimally solve satisfiability, validity, and model-checking, to get EXPSPACE-complete for LTLf+ (extending a recent result for the guarantee level using LTLf), and PSPACE-complete for PPLTL+.
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