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tESA: a distributional measure for calculating semantic relatedness.

Maciej RybinskiJosé Francisco Aldana-Montes
Published in: Journal of biomedical semantics (2016)
Our findings suggest that combined use of the semantics from different sections (i.e. extending the original ESA methodology with the use of title vectors) of the documents of scientific corpora may be used to enhance the performance of a distributional semantic relatedness measures, which can be observed in the largest reference datasets. We also present the impact of the proposed extension on the size of distributional representations.
Keyphrases
  • working memory
  • rna seq