Computer Science – Computation and Language
Scientific paper
1995-06-10
Computer Science
Computation and Language
7 pages, Compressed and uuencoded postscript. To appear: IJCAI-95
Scientific paper
Knowledge-based machine translation (KBMT) techniques yield high quality in domains with detailed semantic models, limited vocabulary, and controlled input grammar. Scaling up along these dimensions means acquiring large knowledge resources. It also means behaving reasonably when definitive knowledge is not yet available. This paper describes how we can fill various KBMT knowledge gaps, often using robust statistical techniques. We describe quantitative and qualitative results from JAPANGLOSS, a broad-coverage Japanese-English MT system.
Chander Ishwar
Haines Matthew
Hatzivassiloglou Vasileios
Hovy Eduard
Iida Masayo
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