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Module Extraction in Expressive Ontology Languages via Datalog Reasoning

机译:通过数据日志推理提取表达本体语言中的模块

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Module extraction is the task of computing a (preferably small) fragment M of an ontology O that preserves a class of entailments over a signature of interest Sigma. Extracting modules of minimal size is well-known to be computationally hard, and often algorithmically infeasible, especially for highly expressive ontology languages. Thus, practical techniques typically rely on approximations, where M provably captures the relevant entailments, but is not guaranteed to be minimal. Existing approximations ensure that M preserves all second-order entailments of O w. r. t. Sigma, which is a stronger condition than is required in many applications, and may lead to unnecessarily large modules in practice. In this paper we propose a novel approach in which module extraction is reduced to a reasoning problem in datalog. Our approach generalises existing approximations in an elegant way. More importantly, it allows extraction of modules that are tailored to preserve only specific kinds of entailments, and thus are often significantly smaller. Our evaluation on a wide range of ontologies confirms the feasibility and benefits of our approach in practice.
机译:模块提取是计算本体O的(最好是较小的)片段M的任务,该片段M保留感兴趣的签名Sigma上的一类必需品。众所周知,提取最小大小的模块在计算上比较困难,并且通常在算法上不可行,尤其是对于高表达本体语言而言。因此,实际技术通常依赖于近似值,其中M可证明地捕获了相关的内容,但并不能保证最小值。现有的近似值可确保M保留O w的所有二阶蕴涵。河t。 Sigma的条件比许多应用程序所要求的条件要强,实际上可能导致不必要的大型模块。在本文中,我们提出了一种新颖的方法,其中模块提取被简化为数据记录中的推理问题。我们的方法以一种优雅的方式概括了现有的近似值。更重要的是,它允许提取专门为保留特定种类的附件而定制的模块,因此通常显着较小。我们对各种本体的评估证实了我们的方法在实践中的可行性和益处。

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