NYU-MILA Neural Machine Translation Systems for WMT'16
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چکیده
We describe the neural machine translation system of New York University (NYU) and University of Montreal (MILA) for the translation tasks of WMT’16. The main goal of NYU-MILA submission to WMT’16 is to evaluate a new character-level decoding approach in neural machine translation on various language pairs. The proposed neural machine translation system is an attention-based encoder–decoder with a subword-level encoder and a character-level decoder. The decoder of the neural machine translation system does not require explicit segmentation, when characters are used as tokens. The character-level decoding approach provides benefits especially when translating a source language into other morphologically rich languages.
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تاریخ انتشار 2016