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Entity Type Prediction in Knowledge Graphs using Embeddings


Entity Type Prediction in Knowledge Graphs using Embeddings



Published: 2020

Buchtitel: Proceedings of International Workshop on Deep Learning for Knowledge Graphs co-located with ESWC 2020
Ausgabe: 2635
Verlag: CEUR
Organisation: DL4KG∂ESWC 2020

Referierte Veröffentlichung

BibTeX

Kurzfassung
Open Knowledge Graphs (such as DBpedia, Wikidata, YAGO) has been recognized as the backbone of diverse applications in the field of data mining and information retrieval. Hence, the completeness and correctness of the Knowledge Graphs (KGs) is vital. Most of these KGs are mostly created either via an automated information extraction from Wikipedia snapshots or information accumulation provided by the users or using heuristics. However, it has been observed that the type informa- tion of these KGs is often noisy, incomplete and incorrect. To deal with this problem a multi-label classification approach is proposed in this work for entity typing using KG embeddings. We compare our approach with the current state-of-the-art type prediction method and report on experiments with the KGs.

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Forschungsgruppe

Information Service Engineering


Forschungsgebiet