Findings of the 2017 Conference on Machine Translation (WMT17)

نویسندگان

  • Ondrej Bojar
  • Rajen Chatterjee
  • Christian Federmann
  • Yvette Graham
  • Barry Haddow
  • Shujian Huang
  • Matthias Huck
  • Philipp Koehn
  • Qun Liu
  • Varvara Logacheva
  • Christof Monz
  • Matteo Negri
  • Matt Post
  • Raphaël Rubino
  • Lucia Specia
  • Marco Turchi
چکیده

This paper presents the results of the WMT17 shared tasks, which included three machine translation (MT) tasks (news, biomedical, and multimodal), two evaluation tasks (metrics and run-time estimation of MT quality), an automatic post-editing task, a neural MT training task, and a bandit learning task.

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تاریخ انتشار 2017