• Title of article

    CHR(PRISM)-based probabilistic logic learning

  • Author/Authors

    JON SNEYERS، نويسنده , , WANNES MEERT، نويسنده , , JOOST VENNEKENS، نويسنده , , YOSHITAKA KAMEYA and TAISUKE SATO، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2010
  • Pages
    15
  • From page
    433
  • To page
    447
  • Abstract
    PRISM is an extension of Prolog with probabilistic predicates and built-in support for expectation-maximization learning. Constraint Handling Rules (CHR) is a high-level pro­gramming language based on multi-headed multiset rewrite rules. In this paper, we introduce a new probabilistic logic formalism, called CHRiSM, based on a combination of CHR and PRISM. It can be used for high-level rapid prototyping of complex statistical models by means of "chance rules". The underlying PRISM system can then be used for several probabilistic inference tasks, including probability computation and parameter learning. We define the CHRiSM language in terms of syntax and operational semantics, and illustrate it with examples. We define the notion of ambiguous programs and define a distribution semantics for unambiguous programs. Next, we describe an implementation of CHRiSM, based on CHR(PRISM). We discuss the relation between CHRiSM and other probabilistic logic programming languages, in particular PCHR. Finally, we identify potential application domains.
  • Keywords
    probabilistic logic learning , constraint handling rules
  • Journal title
    theory and practice of logic programming
  • Serial Year
    2010
  • Journal title
    theory and practice of logic programming
  • Record number

    660646