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Cross-lingual, Character-Level Neural Morphological Tagging (1708.09157v5)

Published 30 Aug 2017 in cs.CL

Abstract: Even for common NLP tasks, sufficient supervision is not available in many languages -- morphological tagging is no exception. In the work presented here, we explore a transfer learning scheme, whereby we train character-level recurrent neural taggers to predict morphological taggings for high-resource languages and low-resource languages together. Learning joint character representations among multiple related languages successfully enables knowledge transfer from the high-resource languages to the low-resource ones, improving accuracy by up to 30% over a monolingual model.

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Authors (2)
  1. Ryan Cotterell (226 papers)
  2. Georg Heigold (9 papers)
Citations (72)

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