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Urgent global research demands real-time dissemination of precise data. Wikidata, a collaborative and openly licensed knowledge graph available in RDF format, provides a forum for exchanging structured data. In this research paper, we catalog the rules describing relational and statistical COVID-19 epidemiological data and implement them in SPARQL, a query language for semantic databases. We demonstrate the efficiency of our methods to evaluate structured information, particularly COVID-19 knowledge in Wikidata, and consequently in collaborative ontologies and knowledge graphs, and we show the advantages and drawbacks of our proposed approach by comparing it to other methods for validation of linked web data. This paper is a preprint and has not yet received peer-review.
Validation constraints, Wikidata, Public health surveillance, COVID-19, Knowledge graph refinement, SPARQL
Validation constraints, Wikidata, Public health surveillance, COVID-19, Knowledge graph refinement, SPARQL
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