Beierle, ChristophEichhorn, ChristianKutsch, Steven2018-01-082018-01-0820172017https://dl.gi.de/handle/20.500.12116/11044When reasoning qualitatively from a conditional knowledge base, two established approaches are system Z and p-entailment. The latter infers skeptically over all ranking models of the knowledge base, while system Z uses the unique pareto-minimal ranking model for the inference relations. Between these two extremes of using all or just one ranking model, the approach of c-representations generates a subset of all ranking models with certain constraints. Recent work shows that skeptical inference over all c-representations of a knowledge base includes and extends p-entailment. In this paper, we follow the idea of using preferred models of the knowledge base instead of the set of all models as a base for the inference relation. We employ different minimality constraints for c-representations and demonstrate inference relations from sets of preferred c-representations with respect to these constraints. We present a practical tool for automatic c-inference that is based on a high-level, declarative constraint-logic programming approach. Using our implementation, we illustrate that different minimality constraints lead to inference relations that differ mutually as well as from system Z and p-entailment.C-inferenceC-representationConditional logicDefault ruleP-entailmentQualitative conditionalRanking functionSystem ZA Practical Comparison of Qualitative Inferences with Preferred Ranking ModelsText/Journal Article1610-1987