�� 2015 The Authors. Published by Association for Computational Linguistics . This is an open access article available under a Creative Commons licence. The published version can be accessed at the following link on the publisher���s website: https://www.aclweb.org/anthology/N15-1103This paper gives a detailed experiment feedback of different approaches to adapt a statistical machine translation system towards a targeted translation project, using only small amounts of parallel in-domain data. The experiments were performed by professional translators under realistic conditions of work using a computer assisted translation tool. We analyze the influence of these adaptations on the translator productivity and on the overall post-editing ef...
Machine translation research has progressed in recent years thanks to statistical machine learning m...
Improving machine translation (MT) by learning from human post-edits is a powerful solution that is ...
In this article we present a three-step methodology for dynamically improving a statistical machine ...
The effective integration of MT technology into CAT tools is a challenging topic both for academic r...
This work investigates a crucial aspect for the integration of MT technology into a CAT environment,...
Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settin...
With the arrival of free on-line machine translation (MT) systems, came the possibility to improve a...
With the arrival of free on-line machine translation (MT) systems, came the possibility to improve a...
We investigate adaptive machine translation (MT) as a way to reduce human workload and enhance user ...
International audienceThis work investigates a crucial aspect for the integration of MT technology i...
Globalization suddenly brings many people from different country to interact with each other, requir...
Although machine translation research achieved big progress for several years, the output of an auto...
The effective integration of MT technology into computer assisted translation tools is a challenging...
International audienceThe effective integration of MT technology into computer-assisted translation ...
We present an evaluation of the benefits of domain adaptation for machine translation, on three sepa...
Machine translation research has progressed in recent years thanks to statistical machine learning m...
Improving machine translation (MT) by learning from human post-edits is a powerful solution that is ...
In this article we present a three-step methodology for dynamically improving a statistical machine ...
The effective integration of MT technology into CAT tools is a challenging topic both for academic r...
This work investigates a crucial aspect for the integration of MT technology into a CAT environment,...
Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settin...
With the arrival of free on-line machine translation (MT) systems, came the possibility to improve a...
With the arrival of free on-line machine translation (MT) systems, came the possibility to improve a...
We investigate adaptive machine translation (MT) as a way to reduce human workload and enhance user ...
International audienceThis work investigates a crucial aspect for the integration of MT technology i...
Globalization suddenly brings many people from different country to interact with each other, requir...
Although machine translation research achieved big progress for several years, the output of an auto...
The effective integration of MT technology into computer assisted translation tools is a challenging...
International audienceThe effective integration of MT technology into computer-assisted translation ...
We present an evaluation of the benefits of domain adaptation for machine translation, on three sepa...
Machine translation research has progressed in recent years thanks to statistical machine learning m...
Improving machine translation (MT) by learning from human post-edits is a powerful solution that is ...
In this article we present a three-step methodology for dynamically improving a statistical machine ...