The interest of LSP and companies in neural machine translation solutions is growing worldwide and in Switzerland. One large Swiss insurance company that is turning its attention towards MT is la Mobilière. In this master thesis, we have trained a NMT system to try and find out whether a trained system can provide a superior output compared to a generic system, DeepL. This was achieved using automatic metrics (BLEU and TER) and human evaluations. Our results show that a trained system can indeed bring considerable advantages compared to DeepL, especially with technical texts. Finally, we carried out semi-structured interviews with the translators who took part in the evaluation task to know their opinions and stances on machine translation ...
Deep learning is revolutionizing speech and natural language technologies since it is offering an ef...
Machines are learning fast, and human translators must keep pace by learning about, with and from th...
Machines are learning fast, and human translators must keep pace by learning with, from and about th...
This paper discusses neural machine translation (NMT), a new paradigm in the MT field, comparing the...
This paper presents a study conducted in collaboration with Swiss Post's Language Service that aims ...
The last few years have witnessed a surge in the interest of a new machine translation paradigm: neu...
This article reports a multifaceted comparison between statistical and neural machine translation (M...
With the current quality of neural machine translation (NMT) systems, the question arises whether po...
Neural Machine Translation is the primary algorithm used in industry to perform machine translation....
Over the last 4 years, Infor has been implementing machine translation (MT) in its translation proce...
While there is a large body of literature on machine translation there is very little known about th...
While Neural Machine Translation (NMT) technology has been around for a few years now in research an...
Deep neural models tremendously improved machine translation. In this context, we investigate whethe...
With economic globalization and the rapid development of the Internet, the connections between diffe...
Machine Translation is the translation of text or speech by a computer with no human involvement. It...
Deep learning is revolutionizing speech and natural language technologies since it is offering an ef...
Machines are learning fast, and human translators must keep pace by learning about, with and from th...
Machines are learning fast, and human translators must keep pace by learning with, from and about th...
This paper discusses neural machine translation (NMT), a new paradigm in the MT field, comparing the...
This paper presents a study conducted in collaboration with Swiss Post's Language Service that aims ...
The last few years have witnessed a surge in the interest of a new machine translation paradigm: neu...
This article reports a multifaceted comparison between statistical and neural machine translation (M...
With the current quality of neural machine translation (NMT) systems, the question arises whether po...
Neural Machine Translation is the primary algorithm used in industry to perform machine translation....
Over the last 4 years, Infor has been implementing machine translation (MT) in its translation proce...
While there is a large body of literature on machine translation there is very little known about th...
While Neural Machine Translation (NMT) technology has been around for a few years now in research an...
Deep neural models tremendously improved machine translation. In this context, we investigate whethe...
With economic globalization and the rapid development of the Internet, the connections between diffe...
Machine Translation is the translation of text or speech by a computer with no human involvement. It...
Deep learning is revolutionizing speech and natural language technologies since it is offering an ef...
Machines are learning fast, and human translators must keep pace by learning about, with and from th...
Machines are learning fast, and human translators must keep pace by learning with, from and about th...