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Find the errors, get the better: Enhancing machine translation via word confidence estimation
2017
Natural Language Engineering
This paper presents two novel ideas of improving the Machine Translation (MT) quality by applying the word-level quality prediction for the second pass of decoding. In this manner, the word scores estimated by word confidence estimation systems help to reconsider the MT hypotheses for selecting a better candidate rather than accepting the current sub-optimal one. In the first attempt, the selection scope is limited to the MT N-best list, in which our proposed re-ranking features are combined
doi:10.1017/s1351324917000080
fatcat:amhxdfdnvvhnpfhnbjpm5s7beu