Anytime Inference in Probabilistic Logic Programs with Tp-Compilation

Vlasselaer, Jonas (KU Leuven) | Broeck, Guy Van den (KU Leuven) | Kimmig, Angelika (KU Leuven) | Meert, Wannes (KU Leuven) | Raedt, Luc De (KU Leuven)

AAAI Conferences 

Existing techniques for inference in probabilistic logic programs are sequential: they first compute the relevant propositional formula for the query of interest, then compile it into a tractable target representation and finally, perform weighted model counting on the resulting representation. We propose Tp-compilation, a new inference technique based on forward reasoning. Tp-compilation proceeds incrementally in that it interleaves the knowledge compilation step for weighted model counting with forward reasoning on the logic program. This leads to a novel anytime algorithm that provides hard bounds on the inferred probabilities. Furthermore, an empirical evaluation shows that Tp-compilation effectively handles larger instances of complex real-world problems than current sequential approaches, both for exact and for anytime approximate inference.

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