Reasoning with models
作者:
摘要
We develop a model-based approach to reasoning, in which the knowledge base is represented as a set of models (satisfying assignments) rather than a logical formula, and the set of queries is restricted. We show that for every propositional knowledge base (KB) there exists a set of characteristic models with the property that a query is true in KB if and only if it is satisfied by the models in this set. We characterize a set of functions for which the model-based representation is compact and provides efficient reasoning. These include cases where the formula-based representation does not support efficient reasoning. In addition, we consider the model-based approach to abductive reasoning and show that for any propositional KB, reasoning with its model-based representation yields an abductive explanation in time that is polynomial in its size. Some of our technical results make use of the monotone theory, a new characterization of Boolean functions recently introduced.
论文关键词:Knowledge representation,Common-sense reasoning,Automated reasoning
论文评审过程:Available online 16 February 1999.
论文官网地址:https://doi.org/10.1016/S0004-3702(96)00006-9