Neural sentence embedding models for semantic similarity estimation in the biomedical domain.
Kathrin BlagecHong XuAsan AgibetovMatthias SamwaldPublished in: BMC bioinformatics (2019)
In this study, we have highlighted the value of neural network-based models for semantic similarity estimation in the biomedical domain by showing that they can keep up with and even surpass previous state-of-the-art approaches for semantic similarity estimation that depend on the availability of laboriously curated ontologies, when evaluated on a biomedical benchmark set. Capturing contradictions and negations in biomedical sentences, however, emerged as an essential area for further work.
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