Conference paper
Temporally-biased sampling for online model management
Brian Hentschel, Peter J. Haas, et al.
EDBT 2018
While the growing corpus of knowledge is now being encoded in the form of knowledge graphs with rich semantics, the current graph embedding models do not incorporate ontology information into the modeling. We propose a scalable and ontology-aware graph embedding model, EmbedS, which is able to capture RDFS ontological assertions. EmbedS models entities, classes, and properties differently in an RDF graph, allowing for a geometrical interpretation of ontology assertions such as type inclusion, sub-classing, and alike.
Brian Hentschel, Peter J. Haas, et al.
EDBT 2018
Jason Ellis, Achille Fokoue, et al.
SIGMOD Record
Aaron Kershenbaum, Achille Fokoue, et al.
OWLED 2006
Vasilis Efthymiou, Oktie Hassanzadeh, et al.
OM 2016