Relying on large-scale parallel corpora, neural machine translation has achieved great success in certain language pairs. However, the acquisition of high-quality parallel corpus is one of the main difficulties in machine translation research. In order to solve this problem, this paper proposes unsupervised domain adaptive neural network machine translation. This method can be trained using only two unrelated monolingual corpora and obtain a good translation result. This article first measures the matching degree of translation rules by adding relevant subject information to the translation rules and dynamically calculating the similarity between each translation rule and the document to be translated during the decoding process. Secondly, ...
Neural machine translation (NMT) conducts end-to-end translation with a source language encoder and ...
Although neural machine translation has become the mainstream method and paradigm in the current res...
Title: Exploring Benefits of Transfer Learning in Neural Machine Translation Author: Tom Kocmi Depar...
This paper considers the unsupervised domain adaptation problem for neural machine translation (NMT)...
We present an approach to neural machine translation (NMT) that supports multiple domains in a singl...
Recently, $k$NN-MT has shown the promising capability of directly incorporating the pre-trained neur...
AbstractThe quality of machine translation is rapidly evolving. Today one can find several machine t...
Monolingual data have been demonstrated to be helpful in improving translation quality of both stati...
We present an approach to neural machine translation (NMT) that supports multiple domains in a singl...
Neural machine translation is known to require large numbers of parallel training sentences, which g...
Neural machine translation requires large amounts of parallel training text to learn a reasonable-qu...
With economic globalization and the rapid development of the Internet, the connections between diffe...
With economic globalization and the rapid development of the Internet, the connections between diffe...
At the level of English resource vocabulary, due to the lack of vocabulary alignment structure, the ...
Machine Translation is the translation of text or speech by a computer with no human involvement. It...
Neural machine translation (NMT) conducts end-to-end translation with a source language encoder and ...
Although neural machine translation has become the mainstream method and paradigm in the current res...
Title: Exploring Benefits of Transfer Learning in Neural Machine Translation Author: Tom Kocmi Depar...
This paper considers the unsupervised domain adaptation problem for neural machine translation (NMT)...
We present an approach to neural machine translation (NMT) that supports multiple domains in a singl...
Recently, $k$NN-MT has shown the promising capability of directly incorporating the pre-trained neur...
AbstractThe quality of machine translation is rapidly evolving. Today one can find several machine t...
Monolingual data have been demonstrated to be helpful in improving translation quality of both stati...
We present an approach to neural machine translation (NMT) that supports multiple domains in a singl...
Neural machine translation is known to require large numbers of parallel training sentences, which g...
Neural machine translation requires large amounts of parallel training text to learn a reasonable-qu...
With economic globalization and the rapid development of the Internet, the connections between diffe...
With economic globalization and the rapid development of the Internet, the connections between diffe...
At the level of English resource vocabulary, due to the lack of vocabulary alignment structure, the ...
Machine Translation is the translation of text or speech by a computer with no human involvement. It...
Neural machine translation (NMT) conducts end-to-end translation with a source language encoder and ...
Although neural machine translation has become the mainstream method and paradigm in the current res...
Title: Exploring Benefits of Transfer Learning in Neural Machine Translation Author: Tom Kocmi Depar...