A User-Study on Online Adaptation of Neural Machine Translation to Human Post-Edits

12/13/2017
by   Sariya Karimova, et al.
0

The advantages of neural machine translation (NMT) have been extensively validated for offline translation of several language pairs for different domains of spoken and written language. However, research on interactive learning of NMT by adaptation to human post-edits has so far been confined to simulation experiments. We present the first user study on online adaptation of NMT to user post-edits. Our study involves 29 human subjects whose post-editing effort and translation quality were measured on about 4,500 interactions of a human post-editor and a machine translation system integrating an online adaptive learning algorithm. Our experimental results show a significant reduction of human post-editing effort due to online adaptation in NMT according to several evaluation metrics, including hTER, hBLEU, and KSMR. Furthermore, we found significant improvements in BLEU/TER between NMT outputs and human references, and a strong correlation of these improvements with quality improvements of post-edits.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/21/2019

Incremental Adaptation of NMT for Professional Post-editors: A User Study

A common use of machine translation in the industry is providing initial...
research
06/10/2017

Online Learning for Neural Machine Translation Post-editing

Neural machine translation has meant a revolution of the field. Neverthe...
research
06/04/2019

Post-editing Productivity with Neural Machine Translation: An Empirical Assessment of Speed and Quality in the Banking and Finance Domain

Neural machine translation (NMT) has set new quality standards in automa...
research
03/07/2019

Integrating Artificial and Human Intelligence for Efficient Translation

Current advances in machine translation increase the need for translator...
research
06/21/2019

Demonstration of a Neural Machine Translation System with Online Learning for Translators

We introduce a demonstration of our system, which implements online lear...
research
05/24/2022

DivEMT: Neural Machine Translation Post-Editing Effort Across Typologically Diverse Languages

We introduce DivEMT, the first publicly available post-editing study of ...
research
06/15/2017

Ensembling Factored Neural Machine Translation Models for Automatic Post-Editing and Quality Estimation

This work presents a novel approach to Automatic Post-Editing (APE) and ...

Please sign up or login with your details

Forgot password? Click here to reset