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Article Dans Une Revue International Journal of Approximate Reasoning Année : 2023

Discovery of link keys in resource description framework datasets based on pattern structures

Résumé

In this paper, we present a detailed and complete study on data interlinking and the discovery of identity links between two RDF-Resource Description Framework-datasets over the web of data. Data interlinking is the task of discovering identity links between individuals across datasets. Link keys are constructions based on pairs of properties and classes that can be considered as rules allowing to infer identity links between subjects in two RDF datasets. Here we investigate how FCA-Formal Concept Analysis-and its extensions are well adapted to investigate and to support the discovery of link keys. Indeed plain FCA allows to discover the so-called link key candidates, while a specific pattern structure allows to associate a pair of classes with every candidate. Different link key candidates can generate sets of identity links between individuals that can be considered as equal when they are regarded as partitions of the identity relation and thus involving a kind of redundancy. In this paper, such a redundancy is deeply studied thanks to partition pattern structures. In particular, experiments are proposed where it is shown that redundancy of link key candidates while not significant when based on identity of partitions appears to be much more significant when based on similarity.
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Dates et versions

hal-04368386 , version 1 (31-12-2023)

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Nacira Abbas, Alexandre Bazin, Jérôme David, Amedeo Napoli. Discovery of link keys in resource description framework datasets based on pattern structures. International Journal of Approximate Reasoning, 2023, 161, pp.108978. ⟨10.1016/j.ijar.2023.108978⟩. ⟨hal-04368386⟩
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