Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settings to quickly produce initial translations for a document which can later be edited by a human. The SMT models specialized for one domain often perform poorly when applied to other domains. The typical assumption that both training and testing data are drawn from the same distribution no longer applies. This paper evaluates domain adaptation techniques for SMT systems in the context of end-user feedback in a real world application. We present our experiments using two adaptive techniques, one relying on log-linear models and the other using mixture models. We describe our experimental results on legal and government data, and present the huma...
With the arrival of free on-line machine translation (MT) systems, came the possibility to improve a...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
Globalization suddenly brings many people from different country to interact with each other, requir...
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given t...
We present an evaluation of the benefits of domain adaptation for machine translation, on three sepa...
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given t...
�� 2015 The Authors. Published by Association for Computational Linguistics . This is an open access...
Abstract. Statistical Machine Translation (SMT) systems are usually trained on large amounts of bili...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
This work investigates a crucial aspect for the integration of MT technology into a CAT environment,...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
In this paper, we tackle the problem of domain adaptation of statistical machine translation (SMT) b...
With the arrival of free on-line machine translation (MT) systems, came the possibility to improve a...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
Globalization suddenly brings many people from different country to interact with each other, requir...
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given t...
We present an evaluation of the benefits of domain adaptation for machine translation, on three sepa...
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given t...
�� 2015 The Authors. Published by Association for Computational Linguistics . This is an open access...
Abstract. Statistical Machine Translation (SMT) systems are usually trained on large amounts of bili...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
This work investigates a crucial aspect for the integration of MT technology into a CAT environment,...
Domain adaptation for machine translation (MT) can be achieved by selecting training instances close...
In this paper, we tackle the problem of domain adaptation of statistical machine translation (SMT) b...
With the arrival of free on-line machine translation (MT) systems, came the possibility to improve a...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...