Concepedia

Publication | Open Access

Document-Wide Decoding for Phrase-Based Statistical Machine Translation

74

Citations

30

References

2012

Year

Abstract

Independence between sentences is an assumption deeply entrenched in the models and algorithms used for statistical machine translation (SMT), particularly in the popular dynamic programming beam search decoding algorithm. This restriction is an obstacle to research on more sophisticated discourse-level models for SMT. We propose a stochastic local search decoding method for phrase-based SMT, which permits free document-wide dependencies in the models. We explore the stability and the search parameters of this method and demonstrate that it can be successfully used to optimise a document-level semantic language model. 1

References

YearCitations

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