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Towards Reasonably-Sized Character-Level Transformer NMT by Finetuning Subword Systems (2004.14280v2)

Published 29 Apr 2020 in cs.CL

Abstract: Applying the Transformer architecture on the character level usually requires very deep architectures that are difficult and slow to train. These problems can be partially overcome by incorporating a segmentation into tokens in the model. We show that by initially training a subword model and then finetuning it on characters, we can obtain a neural machine translation model that works at the character level without requiring token segmentation. We use only the vanilla 6-layer Transformer Base architecture. Our character-level models better capture morphological phenomena and show more robustness to noise at the expense of somewhat worse overall translation quality. Our study is a significant step towards high-performance and easy to train character-based models that are not extremely large.

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Authors (2)
  1. Jindřich Libovický (36 papers)
  2. Alexander Fraser (50 papers)