We explore how the translation direction in the tuning set used for statistical machine translation affects the translation results. We explore this issue for three language pairs. While the results on different metrics are somewhat conflicting, using tuning data translated in the same direction as the translation systems tends to give the best length ratio and Meteor scores for all language pairs. This tendency is confirmed in a small human evaluation
Automatic evaluation of machine translation (MT) is based on the idea that the quality of the MT out...
In most statistical machine translation (SMT) systems, bilingual segments are extracted via word ali...
In most statistical machine translation (SMT) systems, bilingual segments are extracted via word ali...
We explore how the translation direction in the tuning set used for statistical machine translation ...
The effect of translationese has been studied in the field of machine translation (MT), mostly with ...
We study the impact of source length and verbosity of the tuning dataset on the per-formance of para...
Translation models used for statistical machine translation are compiled from parallel corpora that ...
Research on statistical machine transla-tion has focused on particular translation directions, typic...
Current state-of-the-art Statistical Machine Translation systems are based on log-linear models that...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
Introduce statistical machine translation (SMT) using as little math as possible (0 < |math | <...
There has been a proliferation of recent work on SMT tuning algorithms capable of han-dling larger f...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
The translation process in statistical machine translation (SMT) is shaped by technical constraints ...
In most statistical machine translation (SMT) systems, bilingual segments are ex-tracted via word al...
Automatic evaluation of machine translation (MT) is based on the idea that the quality of the MT out...
In most statistical machine translation (SMT) systems, bilingual segments are extracted via word ali...
In most statistical machine translation (SMT) systems, bilingual segments are extracted via word ali...
We explore how the translation direction in the tuning set used for statistical machine translation ...
The effect of translationese has been studied in the field of machine translation (MT), mostly with ...
We study the impact of source length and verbosity of the tuning dataset on the per-formance of para...
Translation models used for statistical machine translation are compiled from parallel corpora that ...
Research on statistical machine transla-tion has focused on particular translation directions, typic...
Current state-of-the-art Statistical Machine Translation systems are based on log-linear models that...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
Introduce statistical machine translation (SMT) using as little math as possible (0 < |math | <...
There has been a proliferation of recent work on SMT tuning algorithms capable of han-dling larger f...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
The translation process in statistical machine translation (SMT) is shaped by technical constraints ...
In most statistical machine translation (SMT) systems, bilingual segments are ex-tracted via word al...
Automatic evaluation of machine translation (MT) is based on the idea that the quality of the MT out...
In most statistical machine translation (SMT) systems, bilingual segments are extracted via word ali...
In most statistical machine translation (SMT) systems, bilingual segments are extracted via word ali...