Since Bahdanau et al. [1] first introduced attention for neural machine translation, most sequence-to-sequence models made use of attention mechanisms [2, 3, 4]. While they produce soft-alignment matrices that could be interpreted as alignment between target and source languages, we lack metrics to quantify their quality, being unclear which approach produces the best alignments. This paper presents an empirical evaluation of 3 of the main sequence-to-sequence models for word discovery from unsegmented phoneme sequences: CNN, RNN and Transformer-based. This task consists in aligning word sequences in a source language with phoneme sequences in a target language, inferring from it word segmentation on the target side [5]. Evaluating word seg...
Machine translation, the task of automatically translating text from one natural language into anoth...
In machine-learning applications, data selection is of crucial importance if good runtime performanc...
With the advent of deep learning, research in many areas of machine learning is converging towards t...
International audienceSince Bahdanau et al. [1] first introduced attention for neural machine transl...
The attention mechanism in Neural Machine Translation (NMT) models added flexibility to translation ...
International audienceAttention-based sequence-to-sequence neural machine translation systems have b...
Word alignments identify translational correspondences between words in a parallel sentence pair and...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...
Automatic word alignment is a key step in training statistical machine translation systems. Despite ...
After more than a decade of phrase-based systems dominating the scene of machine translation, neural...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
Statistical Word Alignments represent lexical word-to-word translations between source and target la...
This study proposes a word alignment model based on a recurrent neural net-work (RNN), in which an u...
Some Transformer-based models can perform cross-lingual transfer learning: those models can be train...
Word alignment is an essential task in natural language processing because of its critical role in t...
Machine translation, the task of automatically translating text from one natural language into anoth...
In machine-learning applications, data selection is of crucial importance if good runtime performanc...
With the advent of deep learning, research in many areas of machine learning is converging towards t...
International audienceSince Bahdanau et al. [1] first introduced attention for neural machine transl...
The attention mechanism in Neural Machine Translation (NMT) models added flexibility to translation ...
International audienceAttention-based sequence-to-sequence neural machine translation systems have b...
Word alignments identify translational correspondences between words in a parallel sentence pair and...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...
Automatic word alignment is a key step in training statistical machine translation systems. Despite ...
After more than a decade of phrase-based systems dominating the scene of machine translation, neural...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
Statistical Word Alignments represent lexical word-to-word translations between source and target la...
This study proposes a word alignment model based on a recurrent neural net-work (RNN), in which an u...
Some Transformer-based models can perform cross-lingual transfer learning: those models can be train...
Word alignment is an essential task in natural language processing because of its critical role in t...
Machine translation, the task of automatically translating text from one natural language into anoth...
In machine-learning applications, data selection is of crucial importance if good runtime performanc...
With the advent of deep learning, research in many areas of machine learning is converging towards t...