Corpus ID: 1820170

Overview of the Patent Machine Translation Task at the NTCIR-10 Workshop

@inproceedings{Goto2011OverviewOT,
  title={Overview of the Patent Machine Translation Task at the NTCIR-10 Workshop},
  author={Isao Goto and Ka-Po Chow and Bin Lu and Eiichiro Sumita and Benjamin Ka-Yin T'sou},
  booktitle={NTCIR},
  year={2011}
}
  • Isao Goto, Ka-Po Chow, +2 authors Benjamin Ka-Yin T'sou
  • Published in NTCIR 2011
  • Computer Science
  • This paper gives an overview of the Patent Machine Translation Task (PatentMT) at NTCIR-9 by describing the test collection, evaluation methods, and evaluation results. We organized three patent machine translation subtasks: Chinese to English, Japanese to English, and English to Japanese. For these subtasks, we provided large-scale test collections, including training data, development data and test data. In total, 21 research groups participated and 130 runs were submitted. We conducted human… CONTINUE READING

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