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Linguistics / Science / Hindi to Punjabi Machine Translation System / Gurpreet Singh Lehal / Statistical machine translation / Example-based machine translation / Apertium / Translation / Makoto Nagao / Machine translation / Computational linguistics / Natural language processing
Date: 2009-11-18 09:24:32
Linguistics
Science
Hindi to Punjabi Machine Translation System
Gurpreet Singh Lehal
Statistical machine translation
Example-based machine translation
Apertium
Translation
Makoto Nagao
Machine translation
Computational linguistics
Natural language processing

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