Fast and optimal decoding for machine translation

Artificial Intelligence(2004)

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摘要
A good decoding algorithm is critical to the success of any statistical machine translation system. The decoder's job is to find the translation that is most likely according to a set of previously learned parameters (and a formula for combining them). Since the space of possible translations is extremely large, typical decoding algorithms are only able to examine a portion of it, thus risking to miss good solutions. Unfortunately, examining more of the space leads to unacceptably slow decodings.In this paper, we compare the speed and output quality of a traditional stack-based decoding algorithm with two new decoders: a fast but non-optimal greedy decoder and a slow but optimal decoder that treats decoding as an integer-programming optimization problem.
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关键词
typical decoding algorithm,statistical machine translation system,good solution,statistical machine translation,decoding,possible translation,slow decodings,optimal decoding,traditional stack-based decoding algorithm,new decoder,good decoding algorithm,optimal decoder,machine translation,non-optimal greedy decoder,optimization problem
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