Logical Methods in Computer Science (Apr 2021)

Coalgebraic Semantics for Probabilistic Logic Programming

  • Tao Gu,
  • Fabio Zanasi

DOI
https://doi.org/10.23638/LMCS-17(2:2)2021
Journal volume & issue
Vol. Volume 17, Issue 2

Abstract

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Probabilistic logic programming is increasingly important in artificial intelligence and related fields as a formalism to reason about uncertainty. It generalises logic programming with the possibility of annotating clauses with probabilities. This paper proposes a coalgebraic semantics on probabilistic logic programming. Programs are modelled as coalgebras for a certain functor F, and two semantics are given in terms of cofree coalgebras. First, the F-coalgebra yields a semantics in terms of derivation trees. Second, by embedding F into another type G, as cofree G-coalgebra we obtain a `possible worlds' interpretation of programs, from which one may recover the usual distribution semantics of probabilistic logic programming. Furthermore, we show that a similar approach can be used to provide a coalgebraic semantics to weighted logic programming.

Keywords