Learning word alignments between parallel sentence pairs is an important task in Statistical Machine Translation. Existing models for word alignment have assumed that word alignment links are untyped. In this work, we propose new machine learning models that use linguistically informed link types to enrich word alignments. We use 11 different alignment link types based on annotated data released by the Linguistics Data Consortium. We first provide a solution to the sub-problem of alignment type prediction given an aligned word pair and then propose two different models to simultaneously predict word alignment and alignment types. Our experimental results show that we can recover alignment link types with an F-score of 81.4%. Our joint model...
In extant phrase-based statistical machine translation (SMT) systems, the transla-tion model relies ...
Current statistical machine translation sys-tems usually extract rules from bilingual corpora annota...
International audienceWith the advent of end-to-end deep learning approaches in machine translation,...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
In this paper, we address the word alignment problem for statistical machine translation. We aim at ...
Statistical Word Alignments represent lexical word-to-word translations between source and target la...
Current word alignment models for statisti-cal machine translation do not address mor-phology beyond...
Current word alignment models for statistical machine translation do not address morphology beyond m...
Automatic word alignment is a key step in training statistical machine translation systems. Despite ...
We introduce a syntactically enhanced word alignment model that is more flex-ible than state-of-the-...
International audienceWord alignments identify translational correspondences between words in a para...
In most statistical machine translation (SMT) systems, bilingual segments are ex-tracted via word al...
Most statistical machine translation systems employ a word-based alignment model. In this paper we d...
This paper proposes a method to improve word alignment by combining various clues. Our method first ...
In machine translation, the alignment of corpora has evolved into a mature research area, aimed at p...
In extant phrase-based statistical machine translation (SMT) systems, the transla-tion model relies ...
Current statistical machine translation sys-tems usually extract rules from bilingual corpora annota...
International audienceWith the advent of end-to-end deep learning approaches in machine translation,...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
In this paper, we address the word alignment problem for statistical machine translation. We aim at ...
Statistical Word Alignments represent lexical word-to-word translations between source and target la...
Current word alignment models for statisti-cal machine translation do not address mor-phology beyond...
Current word alignment models for statistical machine translation do not address morphology beyond m...
Automatic word alignment is a key step in training statistical machine translation systems. Despite ...
We introduce a syntactically enhanced word alignment model that is more flex-ible than state-of-the-...
International audienceWord alignments identify translational correspondences between words in a para...
In most statistical machine translation (SMT) systems, bilingual segments are ex-tracted via word al...
Most statistical machine translation systems employ a word-based alignment model. In this paper we d...
This paper proposes a method to improve word alignment by combining various clues. Our method first ...
In machine translation, the alignment of corpora has evolved into a mature research area, aimed at p...
In extant phrase-based statistical machine translation (SMT) systems, the transla-tion model relies ...
Current statistical machine translation sys-tems usually extract rules from bilingual corpora annota...
International audienceWith the advent of end-to-end deep learning approaches in machine translation,...