2019
DOI: 10.1007/978-3-030-30796-7_1
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The KEEN Universe

Abstract: There is an emerging trend of embedding knowledge graphs (KGs) in continuous vector spaces in order to use those for machine learning tasks. Recently, many knowledge graph embedding (KGE) models have been proposed that learn low dimensional representations while trying to maintain the structural properties of the KGs such as the similarity of nodes depending on their edges to other nodes. KGEs can be used to address tasks within KGs such as the prediction of novel links and the disambiguation of entities. They… Show more

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Cited by 7 publications
(1 citation statement)
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“…MLM is further designed to evaluate the ability for multitask systems to leverage relationships between constituent entities in data and knowledge graph properties used in the generation process. Multitask learning systems that exploit these relationships as a signal are positioned to deliver additional benefits to applications that rely on semantic data and knowledge graphs, which include recommender systems, mobile information retrieval, and bioinformatics [2].…”
Section: Impactmentioning
confidence: 99%
“…MLM is further designed to evaluate the ability for multitask systems to leverage relationships between constituent entities in data and knowledge graph properties used in the generation process. Multitask learning systems that exploit these relationships as a signal are positioned to deliver additional benefits to applications that rely on semantic data and knowledge graphs, which include recommender systems, mobile information retrieval, and bioinformatics [2].…”
Section: Impactmentioning
confidence: 99%