Data Augmentation for Transformer-based G2P

WS 2020 Zach RyanMans Hulden

The Transformer model has been shown to outperform other neural seq2seq models in several character-level tasks. It is unclear, however, if the Transformer would benefit as much as other seq2seq models from data augmentation strategies in the low-resource setting... (read more)

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