| openaire: EC/H2020/780069/EU//MeMADThere are several approaches for improving neural machine translation for low-resource languages: monolingual data can be exploited via pretraining or data augmentation; parallel corpora on related language pairs can be used via parameter sharing or transfer learning in multilingual models; subword segmentation and regularization techniques can be applied to ensure high coverage of the vocabulary. We review these approaches in the context of an asymmetric-resource one-to-many translation task, in which the pair of target languages are related, with one being a very low-resource and the other a higher-resource language. We test various methods on three artificially restricted translation tasks—English to ...
Some natural languages belong to the same family or share similar syntactic and/or semantic regulari...
Both research and commercial machine trans- lation have so far neglected the importance of properly ...
Nowadays, training end-to-end neural models for spoken language translation (SLT) still has to confr...
There are several approaches for improving neural machine translation for low-resource languages: mo...
Title: Exploring Benefits of Transfer Learning in Neural Machine Translation Author: Tom Kocmi Depar...
With the advent of deep neural networks in recent years, Neural Machine Translation (NMT) systems ha...
Multilingual neural machine translation (M-NMT) has recently shown to improve performance of machine...
Neural machine translation (NMT) for low-resource languages has drawn great attention in recent year...
Neural machine translation (NMT) has been a mainstream method for the machine translation (MT) task....
Neural machine translation requires large amounts of parallel training text to learn a reasonable-qu...
Some natural languages belong to the same family or share similar syntactic and/or semantic regulari...
Existing Sequence-to-Sequence (Seq2Seq) Neural Machine Translation (NMT) shows strong capability wit...
Neural Machine Translation has achieved state-of-the-art performance for several language pairs usin...
We consider a low-resource translation task from Finnish into Northern Sámi. Collecting all availabl...
Monolingual data have been demonstrated to be helpful in improving translation quality of both stati...
Some natural languages belong to the same family or share similar syntactic and/or semantic regulari...
Both research and commercial machine trans- lation have so far neglected the importance of properly ...
Nowadays, training end-to-end neural models for spoken language translation (SLT) still has to confr...
There are several approaches for improving neural machine translation for low-resource languages: mo...
Title: Exploring Benefits of Transfer Learning in Neural Machine Translation Author: Tom Kocmi Depar...
With the advent of deep neural networks in recent years, Neural Machine Translation (NMT) systems ha...
Multilingual neural machine translation (M-NMT) has recently shown to improve performance of machine...
Neural machine translation (NMT) for low-resource languages has drawn great attention in recent year...
Neural machine translation (NMT) has been a mainstream method for the machine translation (MT) task....
Neural machine translation requires large amounts of parallel training text to learn a reasonable-qu...
Some natural languages belong to the same family or share similar syntactic and/or semantic regulari...
Existing Sequence-to-Sequence (Seq2Seq) Neural Machine Translation (NMT) shows strong capability wit...
Neural Machine Translation has achieved state-of-the-art performance for several language pairs usin...
We consider a low-resource translation task from Finnish into Northern Sámi. Collecting all availabl...
Monolingual data have been demonstrated to be helpful in improving translation quality of both stati...
Some natural languages belong to the same family or share similar syntactic and/or semantic regulari...
Both research and commercial machine trans- lation have so far neglected the importance of properly ...
Nowadays, training end-to-end neural models for spoken language translation (SLT) still has to confr...