Stronger Baselines for Trustable Results in Neural Machine Translation

WS 2017 Michael DenkowskiGraham Neubig

Interest in neural machine translation has grown rapidly as its effectiveness has been demonstrated across language and data scenarios. New research regularly introduces architectural and algorithmic improvements that lead to significant gains over "vanilla" NMT implementations... (read more)

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