Improvements in text generation technologies such as machine translation have necessitated more costly and time-consuming human evaluation procedures to ensure an accurate signal. We investigate a simple way to reduce cost by reducing the number of text segments that must be annotated in order to accurately predict a score for a complete test set. Using a sampling approach, we demonstrate that information from document membership and automatic metrics can help improve estimates compared to a pure random sampling baseline. We achieve gains of up to 20% in average absolute error by leveraging stratified sampling and control variates. Our techniques can improve estimates made from a fixed annotation budget, are easy to implement, and can be applied to any problem with structure similar to the one we study.
@article{arxiv.2204.05307,
title = {Toward More Effective Human Evaluation for Machine Translation},
author = {Belén Saldías and George Foster and Markus Freitag and Qijun Tan},
journal= {arXiv preprint arXiv:2204.05307},
year = {2022}
}
Comments
ACL 2022 Workshop on Human Evaluation of NLP Systems