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2018
Conference Paper
Titel
A first experiment on including text literals in KGlove
Abstract
Graph embedding models produce embedding vectors for en- tities and relations in Knowledge Graphs, often without taking literal properties into account. We show an initial idea based on the combi-nation of global graph structure with additional information provided by textual information in properties. Our initial experiment shows that this approach might be useful, but does not clearly outperform earlier approaches when evaluated on machine learning tasks.