The attention mechanism in Neural Machine Translation (NMT) models added flexibility to translation systems, and the possibility to visualize soft-alignments between source and target representations. While there is much debate about the relationship between attention and the yielded output for neural models (Jain and Wallace 2019; Serrano and Smith 2019; Wiegreffe and Pinter 2019; Vashishth et al. 2019), in this paper we propose a different assessment, investigating soft-alignment interpretability in low-resource scenarios. We experimented with different architectures (RNN (Bahdanau et al. 2015), 2D-CNN (Elbayad et al. 2018), and Transformer (Vaswani et al. 2017)), comparing them with regards to their ability to produce directly exploitabl...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
In this thesis, I explore neural machine translation (NMT) models via targeted investigation of vari...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...
International audienceThe attention mechanism in Neural Machine Translation (NMT) models added flexi...
Since Bahdanau et al. [1] first introduced attention for neural machine translation, most sequence-t...
Machine translation, the task of automatically translating text from one natural language into anoth...
International audienceSince Bahdanau et al. [1] first introduced attention for neural machine transl...
This work proposes an extensive analysis of the Transformer architecture in the Neural Machine Trans...
After more than a decade of phrase-based systems dominating the scene of machine translation, neural...
With the advent of deep neural networks in recent years, Neural Machine Translation (NMT) systems ha...
Lexically constrained neural machine translation (NMT), which leverages pre-specified translation to...
Word alignments identify translational correspondences between words in a parallel sentence pair and...
Word alignment is an essential task in natural language processing because of its critical role in t...
Unsupervised Machine Translation hasbeen advancing our ability to translatewithout parallel data, bu...
Transformer is a neural machine translation model which revolutionizes machine translation. Compared...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
In this thesis, I explore neural machine translation (NMT) models via targeted investigation of vari...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...
International audienceThe attention mechanism in Neural Machine Translation (NMT) models added flexi...
Since Bahdanau et al. [1] first introduced attention for neural machine translation, most sequence-t...
Machine translation, the task of automatically translating text from one natural language into anoth...
International audienceSince Bahdanau et al. [1] first introduced attention for neural machine transl...
This work proposes an extensive analysis of the Transformer architecture in the Neural Machine Trans...
After more than a decade of phrase-based systems dominating the scene of machine translation, neural...
With the advent of deep neural networks in recent years, Neural Machine Translation (NMT) systems ha...
Lexically constrained neural machine translation (NMT), which leverages pre-specified translation to...
Word alignments identify translational correspondences between words in a parallel sentence pair and...
Word alignment is an essential task in natural language processing because of its critical role in t...
Unsupervised Machine Translation hasbeen advancing our ability to translatewithout parallel data, bu...
Transformer is a neural machine translation model which revolutionizes machine translation. Compared...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
In this thesis, I explore neural machine translation (NMT) models via targeted investigation of vari...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...