Using a Support-Vector Machine for Japanese-to-English Translation of Tense, Aspect, and Modality
classification
💻 cs.CL
keywords
aspectmachinemethodmethodsmodalitysupport-vectortensetranslation
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This paper describes experiments carried out using a variety of machine-learning methods, including the k-nearest neighborhood method that was used in a previous study, for the translation of tense, aspect, and modality. It was found that the support-vector machine method was the most precise of all the methods tested.
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