A Neural Implementation of Multi-Adjoint Logic Programs Via sf-homogenization

نویسندگان

  • J. Medina
  • E. Mérida-Casermeiro
  • M. Ojeda-Aciego
چکیده

A generalization of the homogenization process needed for the neural implementation of multi-adjoint logic programming (a unifying theory to deal with uncertainty, imprecise data or incomplete information) is presented here. The idea is to allow to represent a more general family of adjoint pairs, but maintaining the advantage of the existing implementation recently introduced in [6]. The soundness of the transformation is proved and its complexity is analysed. In addition, the corresponding generalization of the neural-like implementation of the fixed point semantics of multi-adjoint is presented.

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تاریخ انتشار 2004