Inproceedings3846
Leveraging Multilingual Descriptions for Link Prediction: Initial Experiments
Leveraging Multilingual Descriptions for Link Prediction: Initial Experiments
Published: 2020
November
Buchtitel: Proceedings of Poster and Demo Track International Conference on Semantic Web
Ausgabe: 2721
Seiten: 84-89
Verlag: CEUR
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BibTeX
Kurzfassung
In most Knowledge Graphs (KGs), textual descriptions of entities are provided in multiple natural languages. Additional informa- tion that is not explicitly represented in the structured part of the KG might be available in these textual descriptions. Link prediction models which make use of entity descriptions usually consider only one language. However, descriptions given in multiple languages may provide comple- mentary information which should be taken into consideration for the tasks such as link prediction. In this poster paper, the benefits of mul- tilingual embeddings for incorporating multilingual entity descriptions into the task of link prediction in KGs are investigated.
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Information Service Engineering