We present new direct data analysis showing that dynamically-built context-dependent phrasal translation lexicons are more useful resources for phrase-based statistical machine translation (SMT) than conventional static phrasal translation lexicons, which ignore all contextual information. After several years of surprising negative results, recent work sug-gests that context-dependent phrasal translation lexicons are an appropriate framework to successfully incorporate Word Sense Disambiguation (WSD) modeling into SMT. However, this approach has so far only been evaluated using automatic translation quality metrics, which are important, but aggregate many different factors. A direct analysis is still needed to understand how context-depende...
Discriminative translation models utilizing source context have been shown to help statistical machi...
Abstract. Current methods for statistical machine translation typically utilize only a limited conte...
In this paper we investigate the technique of extending the Moses Statistical Machine Translation (S...
Most current statistical machine translation (SMT) systems make very little use of contextual inform...
Most current statistical machine translation (SMT) systems make very little use of contextual infor-...
Contains fulltext : M_333088.pdf (publisher's version ) (Closed access)The transla...
We explore the augmentation of statistical ma-chine translation models with features of the context ...
Traditional machine translation industrial systems usually handle sentences independently, neglectin...
We show for the first time that incorporating the predictions of a word sense disambiguation system ...
This paper presents a methodology to address lexical disambiguation in a standard phrase-based stati...
Abstract. In this work, the use of a phrasal lexicon for statistical machine translation is proposed...
Title: Rich Features in Phrase-Based Machine Translation Author: Kamil Kos Department: Institute of ...
The Phrase-Based Statistical Machine Translation (PB-SMT) model has recently begun to include source...
This thesis addresses mainly two issues that have not been addressed in Statis-tical Machine Transla...
In this paper we investigate the challenges of applying statistical machine translation to meeting c...
Discriminative translation models utilizing source context have been shown to help statistical machi...
Abstract. Current methods for statistical machine translation typically utilize only a limited conte...
In this paper we investigate the technique of extending the Moses Statistical Machine Translation (S...
Most current statistical machine translation (SMT) systems make very little use of contextual inform...
Most current statistical machine translation (SMT) systems make very little use of contextual infor-...
Contains fulltext : M_333088.pdf (publisher's version ) (Closed access)The transla...
We explore the augmentation of statistical ma-chine translation models with features of the context ...
Traditional machine translation industrial systems usually handle sentences independently, neglectin...
We show for the first time that incorporating the predictions of a word sense disambiguation system ...
This paper presents a methodology to address lexical disambiguation in a standard phrase-based stati...
Abstract. In this work, the use of a phrasal lexicon for statistical machine translation is proposed...
Title: Rich Features in Phrase-Based Machine Translation Author: Kamil Kos Department: Institute of ...
The Phrase-Based Statistical Machine Translation (PB-SMT) model has recently begun to include source...
This thesis addresses mainly two issues that have not been addressed in Statis-tical Machine Transla...
In this paper we investigate the challenges of applying statistical machine translation to meeting c...
Discriminative translation models utilizing source context have been shown to help statistical machi...
Abstract. Current methods for statistical machine translation typically utilize only a limited conte...
In this paper we investigate the technique of extending the Moses Statistical Machine Translation (S...