Predicate-argument reordering based on learning to rank for English-Korean machine translation
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- Predicate-argument reordering based on learning to rank for English-Korean machine translation
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![cover image ACM Conferences](/cms/asset/b1d44142-d2b5-454d-bb64-23030c06442f/1968613.cover.jpg)
- General Chairs:
- Suk-Han Lee,
- Lajos Hanzo,
- Program Chairs:
- Min Young Chung,
- Sang-Won Lee,
- Kwangsu Cho
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Association for Computing Machinery
New York, NY, United States
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