QE4PE: Word-level Quality Estimation for Human Post-Editing
Abstract
Word-level quality estimation (QE) methods aim to detect erroneous spans in machine translations, which can direct and facilitate human post-editing. While the accuracy of word-level QE systems has been assessed extensively, their usability and downstream influence on the speed, quality and editing choices of human post-editing remain understudied. In this study, we investigate the impact of word-level QE on machine translation (MT) post-editing in a realistic setting involving 42 professional post-editors across two translation directions. We compare four error-span highlight modalities, including supervised and uncertainty-based word-level QE methods, for identifying potential errors in the outputs of a state-of-the-art neural MT model. Post-editing effort and productivity are estimated from behavioral logs, while quality improvements are assessed by word- and segment-level human annotation. We find that domain, language and editors' speed are critical factors in determining highlights' effectiveness, with modest differences between human-made and automated QE highlights underlining a gap between accuracy and usability in professional workflows.
Cite
@article{arxiv.2503.03044,
title = {QE4PE: Word-level Quality Estimation for Human Post-Editing},
author = {Gabriele Sarti and Vilém Zouhar and Grzegorz Chrupała and Ana Guerberof-Arenas and Malvina Nissim and Arianna Bisazza},
journal= {arXiv preprint arXiv:2503.03044},
year = {2025}
}
Comments
Accepted by TACL (pre-MIT Press publication version); Code: https://github.com/gsarti/qe4pe. Dataset: https://huggingface.co/datasets/gsarti/qe4pe