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Main Authors: Marmonier, Malik, Sagot, Benoît, Bawden, Rachel
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.04083
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author Marmonier, Malik
Sagot, Benoît
Bawden, Rachel
author_facet Marmonier, Malik
Sagot, Benoît
Bawden, Rachel
contents This paper investigates two complementary paradigms for predicting machine translation (MT) quality: source-side difficulty prediction and candidate-side quality estimation (QE). The rapid adoption of Large Language Models (LLMs) into MT workflows is reshaping the research landscape, yet its impact on established quality prediction paradigms remains underexplored. We study this issue through a series of "hindsight" experiments on a unique, multi-candidate dataset resulting from a genuine MT post-editing (MTPE) project. The dataset consists of over 6,000 English source segments with nine translation hypotheses from a diverse set of traditional neural MT systems and advanced LLMs, all evaluated against a single, final human post-edited reference. Using Kendall's rank correlation, we assess the predictive power of source-side difficulty metrics, candidate-side QE models and position heuristics against two gold-standard scores: TER (as a proxy for post-editing effort) and COMET (as a proxy for human judgment). Our findings highlight that the architectural shift towards LLMs alters the reliability of established quality prediction methods while simultaneously mitigating previous challenges in document-level translation.
format Preprint
id arxiv_https___arxiv_org_abs_2603_04083
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Hindsight Quality Prediction Experiments in Multi-Candidate Human-Post-Edited Machine Translation
Marmonier, Malik
Sagot, Benoît
Bawden, Rachel
Computation and Language
This paper investigates two complementary paradigms for predicting machine translation (MT) quality: source-side difficulty prediction and candidate-side quality estimation (QE). The rapid adoption of Large Language Models (LLMs) into MT workflows is reshaping the research landscape, yet its impact on established quality prediction paradigms remains underexplored. We study this issue through a series of "hindsight" experiments on a unique, multi-candidate dataset resulting from a genuine MT post-editing (MTPE) project. The dataset consists of over 6,000 English source segments with nine translation hypotheses from a diverse set of traditional neural MT systems and advanced LLMs, all evaluated against a single, final human post-edited reference. Using Kendall's rank correlation, we assess the predictive power of source-side difficulty metrics, candidate-side QE models and position heuristics against two gold-standard scores: TER (as a proxy for post-editing effort) and COMET (as a proxy for human judgment). Our findings highlight that the architectural shift towards LLMs alters the reliability of established quality prediction methods while simultaneously mitigating previous challenges in document-level translation.
title Hindsight Quality Prediction Experiments in Multi-Candidate Human-Post-Edited Machine Translation
topic Computation and Language
url https://arxiv.org/abs/2603.04083