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Convolutional neural networks for chemical-disease relation extraction are improved with character-based word embeddings (1805.10586v1)

Published 27 May 2018 in cs.CL

Abstract: We investigate the incorporation of character-based word representations into a standard CNN-based relation extraction model. We experiment with two common neural architectures, CNN and LSTM, to learn word vector representations from character embeddings. Through a task on the BioCreative-V CDR corpus, extracting relationships between chemicals and diseases, we show that models exploiting the character-based word representations improve on models that do not use this information, obtaining state-of-the-art result relative to previous neural approaches.

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Authors (2)
  1. Dat Quoc Nguyen (55 papers)
  2. Karin Verspoor (34 papers)
Citations (44)

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