Corpus ID: 221739099

RDF2Vec Light - A Lightweight Approachfor Knowledge Graph Embeddings

@inproceedings{Portisch2020RDF2VecL,
  title={RDF2Vec Light - A Lightweight Approachfor Knowledge Graph Embeddings},
  author={Jan Portisch and M. Hladik and H. Paulheim},
  booktitle={SEMWEB},
  year={2020}
}
Knowledge graph embedding approaches represent nodes and edges of graphs as mathematical vectors. Current approaches focus on embedding complete knowledge graphs, i.e. all nodes and edges. This leads to very high computational requirements on large graphs such as DBpedia or Wikidata. However, for most downstream application scenarios, only a small subset of concepts is of actual interest. In this paper, we present RDF2Vec Light, a lightweight embedding approach based on RDF2Vec which generates… Expand

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