Linking Knowledge Graphs across Languages with Semantic Similarity and Machine Translation
Refereed Conference Meeting Proceeding
Knowledge graphs and ontologies underpin many natural language processing applications, and to apply these to new languages, these knowledge graphs must be translated. Up until now, this has been achieved either by direct label translation or by cross-lingual alignment, which matches the concepts in the graph to another graph in the target languages. We show that these two approaches can, in fact, be combined and that the combination of machine translation and cross-lingual alignment can obtain improved re-sults for translating a biomedical ontology from English to German.
First Workshop on Multi-Language Processing in a Globalising World (MLP2017)
Digital Object Identifer (DOI):
National University of Ireland, Galway (NUIG)
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