Deep Contextualized Word Representations
pivot word itself in the representation and are computed with the encoder of either a supervised neural machine translation (MT) system (CoVe; McCann et al. , 2017 ) or an unsupervised lan-guage model ( Peters et al. , 2017 ). Both of these approaches beneÞt from large datasets, although the MT approach is limited by the size of parallel corpora.
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