Improving machine translation (MT) by learning from human post-edits is a powerful solution that is still unexplored in the neural machine translation (NMT) framework. Also in this scenario, effective techniques for the continuous tuning of an existing model to a stream of manual corrections would have several advantages over current batch methods. First, they would make it possible to adapt systems at run time to new users/domains; second, this would happen at a lower computational cost compared to NMT retraining from scratch or in batch mode.To attack the problem, we explore several online learning strategies to stepwise fine-tune an existing model to the incoming post-edits. Our evaluation on data from two language pairs and different ta...
Using machine translation output as a starting point for human translation has become an increasingl...
Previous phrase-based approaches to Automatic Post-editing (APE) have shown that the dependency ...
Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settin...
© 2018, Springer Nature B.V. The advantages of neural machine translation (NMT) have been extensivel...
Machine learning from user corrections is key to the industrial deployment of machine translation (M...
In this thesis we investigate methods for deploying machine translation (MT) in real-world applicati...
We study the problem of online learning with human feedback in the human-in-the-loop machine transla...
[EN] We introduce a demonstration of our system, which implements online learning for neural ma...
Thesis (Master's)--University of Washington, 2020Neural machine translation (NMT) is a promising app...
In a translation workflow, machine translation (MT) is almost always followed by a human post-editin...
Automatic post-editing (APE) for machine translation (MT) aims to fix recurrent errors made by the ...
We present the results from the fourth round of the WMT shared task on MTAutomatic Post-Editing. ...
This work investigates a crucial aspect for the integration of MT technology into a CAT environment,...
While machine translation is sometimes sufficient for conveying information across language barriers...
Training models for the automatic correction of machine-translated text usually relies on data consi...
Using machine translation output as a starting point for human translation has become an increasingl...
Previous phrase-based approaches to Automatic Post-editing (APE) have shown that the dependency ...
Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settin...
© 2018, Springer Nature B.V. The advantages of neural machine translation (NMT) have been extensivel...
Machine learning from user corrections is key to the industrial deployment of machine translation (M...
In this thesis we investigate methods for deploying machine translation (MT) in real-world applicati...
We study the problem of online learning with human feedback in the human-in-the-loop machine transla...
[EN] We introduce a demonstration of our system, which implements online learning for neural ma...
Thesis (Master's)--University of Washington, 2020Neural machine translation (NMT) is a promising app...
In a translation workflow, machine translation (MT) is almost always followed by a human post-editin...
Automatic post-editing (APE) for machine translation (MT) aims to fix recurrent errors made by the ...
We present the results from the fourth round of the WMT shared task on MTAutomatic Post-Editing. ...
This work investigates a crucial aspect for the integration of MT technology into a CAT environment,...
While machine translation is sometimes sufficient for conveying information across language barriers...
Training models for the automatic correction of machine-translated text usually relies on data consi...
Using machine translation output as a starting point for human translation has become an increasingl...
Previous phrase-based approaches to Automatic Post-editing (APE) have shown that the dependency ...
Abstract. Statistical Machine Translation (SMT) is currently used in real-time and commercial settin...