SOTAVerified

Boosting Neural Machine Translation

2016-12-19IJCNLP 2017Unverified0· sign in to hype

Dakun Zhang, Jungi Kim, Josep Crego, Jean Senellart

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Training efficiency is one of the main problems for Neural Machine Translation (NMT). Deep networks need for very large data as well as many training iterations to achieve state-of-the-art performance. This results in very high computation cost, slowing down research and industrialisation. In this paper, we propose to alleviate this problem with several training methods based on data boosting and bootstrap with no modifications to the neural network. It imitates the learning process of humans, which typically spend more time when learning "difficult" concepts than easier ones. We experiment on an English-French translation task showing accuracy improvements of up to 1.63 BLEU while saving 20% of training time.

Tasks

Reproductions