Learning attention for historical text normalization by learning to pronounce

ACL 2017 Marcel BollmannJoachim BingelAnders S{\o}gaard

Automated processing of historical texts often relies on pre-normalization to modern word forms. Training encoder-decoder architectures to solve such problems typically requires a lot of training data, which is not available for the named task... (read more)

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