Translating into morphologically rich languages is difficult. Although the coverage of lemmas may be reasonable, many morphological variants cannot be learned from the training data. We present a statistical translation system that is able to produce these inflected word forms. Different from most previous work, we do not separate morphological prediction from lexical choice into two consecutive steps. Our approach is novel in that it is integrated in decoding and takes advantage of context information from both the source language and the target language sides
We propose a novel pipeline for translation into morphologically rich languages which consists of tw...
In the framework of statistical machine translation (SMT), correspondences between the words in the ...
While the intuition that morphological preprocessing of languages in various applications can be ben...
We improve the quality of statistical machine translation (SMT) by applying models that predict word...
We present a novel morphological analysis technique which induces a morphological and syntactic sym...
In this paper, a novel algorithm for incorporating morpho-logical knowledge into statistical machine...
We present a novel method of statisti-cal morphological generation, i.e. the pre-diction of inflecte...
State of the art Machine Translation (MT) systems tend to perform poorly when translating into lan-g...
Summarization: Background in statistical machine translation -- 2. Language morphologies -- 3. The ...
In statistical machine translation, estimating word-to-word alignment probabilities for the translat...
Summarization: Introduction 2. Scientific goals 3. Baseline system 4. Corpus 5. Morphology 6. ...
We address the problem of translating from morphologically poor to morphologically rich languages by...
Translation into morphologically rich languages is an important but recalcitrant problem in MT. We p...
Translation into morphologically rich lan-guages is an important but recalcitrant prob-lem in MT. We...
Abstract We propose a language-independent approach for improving statistical machine translation fo...
We propose a novel pipeline for translation into morphologically rich languages which consists of tw...
In the framework of statistical machine translation (SMT), correspondences between the words in the ...
While the intuition that morphological preprocessing of languages in various applications can be ben...
We improve the quality of statistical machine translation (SMT) by applying models that predict word...
We present a novel morphological analysis technique which induces a morphological and syntactic sym...
In this paper, a novel algorithm for incorporating morpho-logical knowledge into statistical machine...
We present a novel method of statisti-cal morphological generation, i.e. the pre-diction of inflecte...
State of the art Machine Translation (MT) systems tend to perform poorly when translating into lan-g...
Summarization: Background in statistical machine translation -- 2. Language morphologies -- 3. The ...
In statistical machine translation, estimating word-to-word alignment probabilities for the translat...
Summarization: Introduction 2. Scientific goals 3. Baseline system 4. Corpus 5. Morphology 6. ...
We address the problem of translating from morphologically poor to morphologically rich languages by...
Translation into morphologically rich languages is an important but recalcitrant problem in MT. We p...
Translation into morphologically rich lan-guages is an important but recalcitrant prob-lem in MT. We...
Abstract We propose a language-independent approach for improving statistical machine translation fo...
We propose a novel pipeline for translation into morphologically rich languages which consists of tw...
In the framework of statistical machine translation (SMT), correspondences between the words in the ...
While the intuition that morphological preprocessing of languages in various applications can be ben...