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FunMap: Efficient Execution of Functional Mappings for Knowledge Graph Creation

机译:FunMap:有效地执行知识图创建的功能映射

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Data has exponentially grown in the last years, and knowledge graphs constitute powerful formalisms to integrate a myriad of existing data sources. Transformation functions - specified with function-based mapping languages like FunUL and RML+FnO can be applied to overcome interoperability issues across heterogeneous data sources. However, the absence of engines to efficiently execute these mapping languages hinders their global adoption. We propose FunMap, an interpreter of function-based mapping languages; it relies on a set of lossless rewriting rules to push down and materialize the execution of functions in initial steps of knowledge graph creation. Although applicable to any function-based mapping language that supports joins between mapping rules, FunMap feasibility is shown on RML+FnO. FunMap reduces data redundancy, e.g., duplicates and unused attributes, and converts RML+FnO mappings into a set of equivalent rules executable on RML-compliant engines. We evaluate FunMap performance over real-world testbeds from the biomedical domain. The results indicate that FunMap reduces the execution time of RML-compliant engines by up to a factor of 18, furnishing, thus, a scalable solution for knowledge graph creation.
机译:数据在过去几年中具有指数增长,知识图构成了整合无数现有数据来源的强大形式主义。转换函数 - 用基于功能的映射语言指定,如Funul和RML + FNO,可以应用于克服异构数据源的互操作性问题。然而,没有发动机有效地执行这些映射语言阻碍了他们的全球领养。我们提出了基于功能的映射语言的解释器的Funmap;它依赖于一组无损重写规则来推动并在知识图形创建的初始步骤中按下并实现函数的执行。虽然适用于支持映射规则之间连接的任何基于功能的映射语言,但在RML + FNO上显示了FunMap可行性。 FunMap减少了数据冗余,例如重复和未使用的属性,并将RML + FNO映射转换为符合RML标准的引擎的一组等效规则。我们评估来自生物医学领域的真实世界测试床的Funmap性能。结果表明,FunMap将RML标准的发动机的执行时间降低了18倍,因此提供了一种可扩展的知识图形创建的可扩展解决方案。

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