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首页> 外文期刊>IEICE transactions on information and systems >Query Rewriting or Ontology Modification? Toward a Faster Approximate Reasoning on LOD Endpoints
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Query Rewriting or Ontology Modification? Toward a Faster Approximate Reasoning on LOD Endpoints

机译:查询重写还是本体修改?在LOD端点上寻求更快的近似推理

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摘要

On an inference-enabled Linked Open Data (LOD) endpoint, usually a query execution takes longer than on an LOD endpoint without inference engine due to its processing of reasoning. Although there are two separate kind of approaches, query modification approaches, and ontology modifications have been investigated on the different contexts, there have been discussions about how they can be chosen or combined for various settings. In this paper, for reducing query execution time on an inference-enabled LOD endpoint, we compare these two promising methods: query rewriting and ontology modification, as well as trying to combine them into a cluster of such systems. We employ an evolutionary approach to make such rewriting and modification of queries and ontologies based on the past-processed queries and their results. We show how those two approaches work well on implementing an inference-enabled LOD endpoint by a cluster of SPARQL endpoints.
机译:在启用推理的链接开放数据(LOD)终结点上,由于其对推理的处理,通常查询执行比没有推理引擎的LOD终结点花费的时间更长。尽管有两种单独的方法,即查询修改方法和本体修改已在不同的上下文中进行了研究,但已经讨论了如何针对各种设置选择或组合它们。在本文中,为了减少在启用推理的LOD端点上的查询执行时间,我们比较了这两种有前途的方法:查询重写和本体修改,以及尝试将它们组合到此类系统的集群中。我们采用一种进化的方法,根据过去处理的查询及其结果对查询和本体进行重写和修改。我们展示了这两种方法在通过SPARQL端点集群实现启用推理的LOD端点时如何很好地工作。

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