Semantical and computational aspects of Horn approximations

作者:

摘要

Selman and Kautz proposed a method, called Horn approximation, for speeding up inference in propositional Knowledge Bases. Their technique is based on the compilation of a propositional formula into a pair of Horn formulae: a Horn Greatest Lower Bound (GLB) and a Horn Least Upper Bound (LUB). In this paper we focus on GLBs and address two questions that have been only marginally addressed so far: 1.what is the semantics of the Horn GLBs?2.what is the exact complexity of finding them? We obtain semantical as well as computational results. The major semantical result is: The set of minimal models of a propositional formula and the set of minimum models of its Horn GLBs are the same. The major computational result is: Finding a Horn GLB of a propositional formula in CNF is NP -equivalent.

论文关键词:Knowledge compilation,Knowledge approximation,Computational complexity,Horn formulae

论文评审过程:Received 22 December 1997, Revised 23 November 1999, Available online 8 August 2000.

论文官网地址:https://doi.org/10.1016/S0004-3702(00)00010-2