Rule-driven inconsistency resolution for knowledge graph generation rules

@article{Heyvaert2019RuledrivenIR,
  title={Rule-driven inconsistency resolution for knowledge graph generation rules},
  author={Pieter Heyvaert and B. D. Meester and Anastasia Dimou and R. Verborgh},
  journal={Semantic Web},
  year={2019},
  volume={10},
  pages={1071-1086}
}
Knowledge graphs, which contain annotated descriptions of entities and their interrelations, are often generated using rules that apply semantic annotations to certain data sources. (Re)using ontology terms without adhering to the axioms defined by their ontologies results in inconsistencies in these graphs, affecting their quality. Methods and tools were proposed to detect and resolve inconsistencies, the root causes of which include rules and ontologies. However, these either require access… Expand

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