Deciding the Satisfiability of Combined Qualitative Constraint Networks
AI 摘要
该论文提出一个统一的定性推理框架,研究了组合定性约束网络的可满足性判定及其复杂性。
主要贡献
- 统一了多种定性形式的扩展和组合
- 建立了可满足性判定的多项式定理
- 推广了定性形式主义的定义
方法论
构建形式化框架,通过理论分析和证明,研究组合定性约束网络的可满足性问题。
原文摘要
Among the various forms of reasoning studied in the context of artificial intelligence, qualitative reasoning makes it possible to infer new knowledge in the context of imprecise, incomplete information without numerical values. In this paper, we propose a formal framework unifying several forms of extensions and combinations of qualitative formalisms, including multi-scale reasoning, temporal sequences, and loose integrations. This framework makes it possible to reason in the context of each of these combinations and extensions, but also to study in a unified way the satisfiability decision and its complexity. In particular, we establish two complementary theorems guaranteeing that the satisfiability decision is polynomial, and we use them to recover the known results of the size-topology combination. We also generalize the main definition of qualitative formalism to include qualitative formalisms excluded from the definitions of the literature, important in the context of combinations.