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Sequence-to-sequence neural network models for transliteration (1610.09565v1)
Published 29 Oct 2016 in cs.CL
Abstract: Transliteration is a key component of machine translation systems and software internationalization. This paper demonstrates that neural sequence-to-sequence models obtain state of the art or close to state of the art results on existing datasets. In an effort to make machine transliteration accessible, we open source a new Arabic to English transliteration dataset and our trained models.
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