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SAOR: Template Rule Optimisations for Distributed Reasoning over 1 Billion Linked Data Triples

机译:Saor:模板规则优化,分布式推理超过10亿链接数据三元组

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In this paper, we discuss optimisations of rule-based materialisation approaches for reasoning over large static RDF datasets. We generalise and re-formalise what we call the "partial-indexing" approach to scalable rule-based materialisation: the approach is based on a separation of terminological data, which has been shown in previous and related works to enable highly scalable and distributable reasoning for specific rulesets; in so doing, we provide some completeness propositions with respect to semi-naive evaluation. We then show how related work on template rules - T-Box-specific dynamic rulesets created by binding the terminological patterns in the static ruleset - can be incorporated and optimised for the partial-indexing approach. We evaluate our methods using LUBM(10) for RDFS, pD~* (OWL Horst) and OWL 2 RL, and thereafter demonstrate pragmatic distributed reasoning over 1.12 billion Linked Data statements for a subset of OWL 2 RL/RDF rules we argue to be suitable for Web reasoning.
机译:在本文中,我们讨论了基于规则的实质性方法的优化,以推理大静态RDF数据集。我们概括并重新形成了我们称之为基于规则的规则的“部分索引”方法:该方法是基于术语数据的分离,该数据已在以前和相关的作品中显示,以实现高度可扩展和可分配的推理对于特定的规则集;这样做,我们就半天真评价提供了一些完整性主张。然后,我们展示了如何通过绑定静态规则集中的术语模式创建的模板规则 - 特定于特定的动态规则集 - 可以针对部分索引方法进行整合和优化。我们使用LUBM(10)来评估我们的RDFS,PD〜*(OWL HORST)和猫头鹰2 RL的方法,此后展示了我们认为的猫头鹰2个RL / RDF规则的子集超过1112亿链接数据陈述的务实分布式推理适合网页推理。

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