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Multi-way, multilingual neural machine translation

Computer speech & language, v.45, 2017년, pp.236 - 252  

Firat, Orhan (Middle East Technical University, Turkey) ,  Cho, Kyunghyun (New York University, USA) ,  Sankaran, Baskaran (IBM T.J. Watson Research Center, USA) ,  Yarman Vural, Fatos T. (Middle East Technical University, Turkey) ,  Bengio, Yoshua (University of Montreal, Canada)

Abstract AI-Helper 아이콘AI-Helper

Abstract We propose multi-way, multilingual neural machine translation. The proposed approach enables a single neural translation model to translate between multiple languages, with a number of parameters that grows only linearly with the number of languages. This is made possible by having a singl...

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