This thesis aims for general robust Neural Machine Translation (NMT) that is agnostic to the test domain. NMT has achieved high quality on benchmarks with closed datasets such as WMT and NIST but can fail when the translation input contains noise due to, for example, mismatched domains or spelling errors. The standard solution is to apply domain adaptation or data augmentation to build a domain-dependent system. However, in real life, the input noise varies in a wide range of domains and types, which is unknown in the training phase. This thesis introduces five general approaches to improve NMT accuracy and robustness, where three of them are invariant to models, test domains, and noise types. First, we describe a novel unsupervised text no...
In this dissertation, we examine applications of neural machine translation to computer aided transl...
We investigate the application of Neural Machine Translation (NMT) under the following three co...
Humans benefit from communication but suffer from language barriers. Machine translation (MT) aims t...
This thesis aims for general robust Neural Machine Translation (NMT) that is agnostic to the test do...
Translating text that diverges from the training domain is a key challenge for machine translation. ...
Neural Machine Translation (NMT) models have been proved strong when translating clean texts, but th...
Both Statistical Machine Translation and Neural Machine Translation (NMT) are data-dependent learnin...
Neural machine translation models have shown to achieve high quality when trained and fed with well ...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
We consider two problems of NMT domain adaptation using meta-learning. First, we want to reach domai...
Data-driven machine translation paradigms—which use machine learning to create translation models th...
The advancement of neural network models has led to state-of-the-art performance in a wide range of ...
We consider two problems of NMT domain adaptation using meta-learning. First, we want to reach domai...
We present an approach to neural machine translation (NMT) that supports multiple domains in a singl...
Neural Machine Translation is the primary algorithm used in industry to perform machine translation....
In this dissertation, we examine applications of neural machine translation to computer aided transl...
We investigate the application of Neural Machine Translation (NMT) under the following three co...
Humans benefit from communication but suffer from language barriers. Machine translation (MT) aims t...
This thesis aims for general robust Neural Machine Translation (NMT) that is agnostic to the test do...
Translating text that diverges from the training domain is a key challenge for machine translation. ...
Neural Machine Translation (NMT) models have been proved strong when translating clean texts, but th...
Both Statistical Machine Translation and Neural Machine Translation (NMT) are data-dependent learnin...
Neural machine translation models have shown to achieve high quality when trained and fed with well ...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
We consider two problems of NMT domain adaptation using meta-learning. First, we want to reach domai...
Data-driven machine translation paradigms—which use machine learning to create translation models th...
The advancement of neural network models has led to state-of-the-art performance in a wide range of ...
We consider two problems of NMT domain adaptation using meta-learning. First, we want to reach domai...
We present an approach to neural machine translation (NMT) that supports multiple domains in a singl...
Neural Machine Translation is the primary algorithm used in industry to perform machine translation....
In this dissertation, we examine applications of neural machine translation to computer aided transl...
We investigate the application of Neural Machine Translation (NMT) under the following three co...
Humans benefit from communication but suffer from language barriers. Machine translation (MT) aims t...