6533b7d5fe1ef96bd1263ab4
RESEARCH PRODUCT
Global RDF Vector Space Embeddings
Petar RistoskiSimone Paolo PonzettoMichael CochezMichael CochezHeiko Paulheimsubject
Theoretical computer scienceComputer science020204 information systems0202 electrical engineering electronic engineering information engineeringRdf graph020201 artificial intelligence & image processing02 engineering and technologycomputer.file_formatLinked dataRDFcomputerWord (computer architecture)Vector spacedescription
Vector space embeddings have been shown to perform well when using RDF data in data mining and machine learning tasks. Existing approaches, such as RDF2Vec, use local information, i.e., they rely on local sequences generated for nodes in the RDF graph. For word embeddings, global techniques, such as GloVe, have been proposed as an alternative. In this paper, we show how the idea of global embeddings can be transferred to RDF embeddings, and show that the results are competitive with traditional local techniques like RDF2Vec.
year | journal | country | edition | language |
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2017-01-01 |