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Ontology Module Extraction via Datalog Reasoning

机译:本体模块通过Datalog推理提取

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Module extraction—the task of computing a (preferably small) fragment M of an ontology T that preserves entailments over a signature ∑-has found many applications in recent years. Extracting modules of minimal size is, however, computationally hard, and often algorithmically infeasible. Thus, practical techniques are based on approximations, where M provably captures the relevant entailments, but is not guaranteed to be minimal. Existing approximations, however, ensure that M-preserves all second-order entailments of T w.r.t. ∑, which is stronger than is required in many applications, and may lead to 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 not only generalises existing approximations in an elegant way, but it can also be tailored to preserve only specific kinds of entailments, which allows us to extract significantly smaller modules. An evaluation on widely-used ontologies has shown very encouraging results.
机译:模块提取 - 计算Ontology T的(优选小的)片段M的任务,该碎片M保留在签名中Σ-in近年来的许多应用。然而,在计算最小的尺寸的提取模块,并且经常算法可行。因此,实际技术基于近似值,其中M可否捕获相关的蕴涵,但不能保证最小。但是,现有的近似确保M-PUSTEVES的所有二阶报表T W.R.T. σ,它比许多应用中所需的强度强,并且可能导致实践中的大模块。在本文中,我们提出了一种新的方法,其中模块提取减少到Datalog中的推理问题。我们的方法不仅以优雅的方式推出现有的近似,但它也可以量身定制以保留特定类型的蕴涵,这使我们能够提取明显较小的模块。对广泛使用的本体的评估表现出非常令人鼓舞的结果。

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