What does Attention in Neural Machine Translation Pay Attention to?

10/09/2017
by   Hamidreza Ghader, et al.
0

Attention in neural machine translation provides the possibility to encode relevant parts of the source sentence at each translation step. As a result, attention is considered to be an alignment model as well. However, there is no work that specifically studies attention and provides analysis of what is being learned by attention models. Thus, the question still remains that how attention is similar or different from the traditional alignment. In this paper, we provide detailed analysis of attention and compare it to traditional alignment. We answer the question of whether attention is only capable of modelling translational equivalent or it captures more information. We show that attention is different from alignment in some cases and is capturing useful information other than alignments.

READ FULL TEXT

page 6

page 7

research
07/30/2016

Supervised Attentions for Neural Machine Translation

In this paper, we improve the attention or alignment accuracy of neural ...
research
09/14/2016

Neural Machine Translation with Supervised Attention

The attention mechanisim is appealing for neural machine translation, si...
research
04/17/2017

Does Neural Machine Translation Benefit from Larger Context?

We propose a neural machine translation architecture that models the sur...
research
01/31/2019

Adding Interpretable Attention to Neural Translation Models Improves Word Alignment

Multi-layer models with multiple attention heads per layer provide super...
research
09/11/2018

On The Alignment Problem In Multi-Head Attention-Based Neural Machine Translation

This work investigates the alignment problem in state-of-the-art multi-h...
research
09/11/2021

Modeling Concentrated Cross-Attention for Neural Machine Translation with Gaussian Mixture Model

Cross-attention is an important component of neural machine translation ...
research
10/27/2016

Can Active Memory Replace Attention?

Several mechanisms to focus attention of a neural network on selected pa...

Please sign up or login with your details

Forgot password? Click here to reset