Translating into morphologically rich languages is a particularly difficult problem in machine translation due to the high degree of inflectional ambiguity in the target language, often only poorly captured by existing word translation models. We present a general approach that exploits source-side contexts of foreign words to improve translation prediction accuracy. Our approach is based on a probabilistic neural network which does not require linguistic annotation nor manual feature engineering. We report significant improvements in word translation prediction accuracy for three morphologically rich target languages. In addition, preliminary results for integrating our approach into a large-scale English-Russian statistical machine transl...
Treating morphologically complex words (MCWs) as atomic units in translation would not yield a desi...
Translation into morphologically rich languages is an important but recalcitrant problem in MT. We p...
We explore the application of neural language models to machine translation. We develop a new model ...
Translating into morphologically rich lan-guages is a particularly difficult problem in machine tran...
Neural machine translation (NMT) suffers a performance deficiency when a limited vocabulary fails to...
We propose a novel pipeline for translation into morphologically rich languages which consists of tw...
Neural Machine Translation has achieved state-of-the-art performance for several language pairs usin...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
In interactive machine translation (MT), human translators correct errors in automatic translations ...
A morphologically complex word (MCW) is a hierarchical constituent with meaning-preserving subunits,...
Lexical sparsity is a major challenge for machine translation into morphologically rich languages. W...
Translation into morphologically-rich languages challenges neural machine translation (NMT) models w...
We improve the quality of statistical machine translation (SMT) by applying models that predict word...
Selecting the right word translation among several options in the lexicon is a core problem for mach...
Abstract We propose a language-independent approach for improving statistical machine translation fo...
Treating morphologically complex words (MCWs) as atomic units in translation would not yield a desi...
Translation into morphologically rich languages is an important but recalcitrant problem in MT. We p...
We explore the application of neural language models to machine translation. We develop a new model ...
Translating into morphologically rich lan-guages is a particularly difficult problem in machine tran...
Neural machine translation (NMT) suffers a performance deficiency when a limited vocabulary fails to...
We propose a novel pipeline for translation into morphologically rich languages which consists of tw...
Neural Machine Translation has achieved state-of-the-art performance for several language pairs usin...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
In interactive machine translation (MT), human translators correct errors in automatic translations ...
A morphologically complex word (MCW) is a hierarchical constituent with meaning-preserving subunits,...
Lexical sparsity is a major challenge for machine translation into morphologically rich languages. W...
Translation into morphologically-rich languages challenges neural machine translation (NMT) models w...
We improve the quality of statistical machine translation (SMT) by applying models that predict word...
Selecting the right word translation among several options in the lexicon is a core problem for mach...
Abstract We propose a language-independent approach for improving statistical machine translation fo...
Treating morphologically complex words (MCWs) as atomic units in translation would not yield a desi...
Translation into morphologically rich languages is an important but recalcitrant problem in MT. We p...
We explore the application of neural language models to machine translation. We develop a new model ...