Statistical Machine Translation (SMT) systems are usually trained on large amounts of bilingual text and monolingual target language text. If a significant amount of out-of-domain data is added to the training data, the quality of translation can drop. On the other hand, training an SMT system on a small amount of training material for given indomain data leads to narrow lexical coverage which again results in a low translation quality. In this paper, (i) we explore domain-adaptation techniques to combine large out-of-domain training data with small-scale in-domain training data for English—Hindi statistical machine translation and (ii) we cluster large out-of-domain training data to extract sentences similar to in-domain sentences and appl...
Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settin...
Abstract tra Statistical machine translation systems are usually trained on large amounts of bilingu...
This paper describes the ADAPT Centre’s submission to the Adap-MT 2020 AI Translation Shared Task fo...
Statistical Machine Translation (SMT) systems are usually trained on large amounts of bilingual text...
Abstract. Statistical Machine Translation (SMT) systems are usually trained on large amounts of bili...
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given t...
Globalization suddenly brings many people from different country to interact with each other, requir...
This paper reports on the ongoing work focused on domain adaptation of statistical machine translati...
Domain adaptation has recently gained interest in statistical machine translation to cope with the p...
In this paper, we tackle the problem of domain adaptation of statistical machine translation (SMT) b...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
This paper presents a set of experiments on Domain Adaptation of Statistical Machine Translation sys...
After availability of cheaper large memory and high performance processors, Statistical Machine Tran...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settin...
Abstract tra Statistical machine translation systems are usually trained on large amounts of bilingu...
This paper describes the ADAPT Centre’s submission to the Adap-MT 2020 AI Translation Shared Task fo...
Statistical Machine Translation (SMT) systems are usually trained on large amounts of bilingual text...
Abstract. Statistical Machine Translation (SMT) systems are usually trained on large amounts of bili...
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given t...
Globalization suddenly brings many people from different country to interact with each other, requir...
This paper reports on the ongoing work focused on domain adaptation of statistical machine translati...
Domain adaptation has recently gained interest in statistical machine translation to cope with the p...
In this paper, we tackle the problem of domain adaptation of statistical machine translation (SMT) b...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
This paper presents a set of experiments on Domain Adaptation of Statistical Machine Translation sys...
After availability of cheaper large memory and high performance processors, Statistical Machine Tran...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settin...
Abstract tra Statistical machine translation systems are usually trained on large amounts of bilingu...
This paper describes the ADAPT Centre’s submission to the Adap-MT 2020 AI Translation Shared Task fo...