A Structured Prediction Approach for Statistical Machine Translation


Autoria(s): 张大鲲; 孙乐; 李文波
Data(s)

31/12/2009

Resumo

We propose a new formally syntax-based method for statistical machine translation. Transductions between parsing trees are transformed into a problem of sequence tagging, which is then tackled by a search- based structured prediction method. This allows us to automatically acquire transla- tion knowledge from a parallel corpus without the need of complex linguistic parsing. This method can achieve compa- rable results with phrase-based method (like Pharaoh), however, only about ten percent number of translation table is used. Experiments show that the structured pre- diction approach for SMT is promising for its strong ability at combining words.

Identificador

http://ir.iscas.ac.cn/handle/311060/639

http://www.irgrid.ac.cn/handle/1471x/67256

Idioma(s)

中文

Fonte

张大鲲,孙乐,李文波.A Structured Prediction Approach for Statistical Machine Translation.见:Third International Joint Conference on Natural Language Processing .北京.2008-01-07 .

Tipo

会议论文