Learning OWL 2 Property Characteristics as an Explanation for an RNN

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Abstract

We propose an approach to indirectly learn the Web Ontology Language OWL 2 property characteristics as an explanation for a deep recurrent neural network (RNN). The input is a knowledge graph represented in Resource Description Framework (RDF) and the output are scored axioms representing the characteristics. The proposed method is capable of learning all the characteristics included in OWL 2: Functional, inverse functional, reflexive and irreflexive, symmetric and asymmetric, transitive. We report and discuss experimental evaluation on DBpedia 2016-10, showing that the proposed approach has advantages over a simple counting baseline.

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POTONIEC, J. (2020). Learning OWL 2 Property Characteristics as an Explanation for an RNN. Bulletin of the Polish Academy of Sciences: Technical Sciences, 68(6), 1481–1490. https://doi.org/10.24425/bpasts.2020.134625

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