Anytime Weighted Model Counting with Approximation Guarantees for Probabilistic Inference

DADubray, AlexandreSPSchaus, PierreNSNijssen, Siegfried

Institute of Information and Communication Technologies

Indexed indatacite

Abstract

Weighted model counting, that is, counting the weighted number of satisfying assignments of a propositional formula, is an important tool in probabilistic reasoning. Recently, the use of projected weighted model counting (PWMC) has been proposed as an approach to formulate and answer probabilistic queries. In this work, we propose a new simplified modeling language based on PWMC in which probabilistic inference tasks are modeled using a conjunction of Horn clauses and a particular weighting scheme for the variables. We show that the major problems of inference for Bayesian Networks, network reachability and probabilistic logic programming can be modeled in this language. Subsequently, we propose a new,…

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284
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Authors

3
  • DA
    Dubray, AlexandreCorresponding

    Institute of Information and Communication Technologies

  • SP
    Schaus, Pierre

    Institute of Information and Communication Technologies

  • NS
    Nijssen, Siegfried

    Institute of Information and Communication Technologies

Topics & keywords

Keywords
  • Bayesian network
  • Computer science
  • R package
  • Conditional independence
  • Artificial intelligence
  • Constraint (computer-aided design)
  • Machine learning
  • Independence (probability theory)
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