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Main Authors: Zhang, Yilin, Xu, Wenda, Liu, Zhongtao, Nakagawa, Tetsuji, Freitag, Markus
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.22028
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author Zhang, Yilin
Xu, Wenda
Liu, Zhongtao
Nakagawa, Tetsuji
Freitag, Markus
author_facet Zhang, Yilin
Xu, Wenda
Liu, Zhongtao
Nakagawa, Tetsuji
Freitag, Markus
contents Quality Estimation (QE) metrics are vital in machine translation for reference-free evaluation and increasingly serve as selection criteria in data filtering and candidate reranking. However, the prevalence and impact of length bias in QE metrics have been underexplored. Through a systematic study of top-performing learned and LLM-as-a-Judge QE metrics across 10 diverse language pairs, we reveal two critical length biases: First, QE metrics consistently over-predict errors with increasing translation length, even for high-quality, error-free texts. Second, they exhibit a systematic preference for shorter translations when multiple candidates of comparable quality are available for the same source text. These biases risk unfairly penalizing longer, correct translations and can propagate into downstream pipelines that rely on QE signals for data selection or system optimization. We trace the root cause of learned QE metrics to skewed supervision distributions, where longer error-free examples are underrepresented in training data. As a diagnostic intervention, we apply length normalization during training and show that this simple modification effectively decouples error prediction from sequence length, yielding more reliable QE signals across translations of varying length.
format Preprint
id arxiv_https___arxiv_org_abs_2510_22028
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Penalizing Length: Uncovering Systematic Bias in Quality Estimation Metrics
Zhang, Yilin
Xu, Wenda
Liu, Zhongtao
Nakagawa, Tetsuji
Freitag, Markus
Computation and Language
Quality Estimation (QE) metrics are vital in machine translation for reference-free evaluation and increasingly serve as selection criteria in data filtering and candidate reranking. However, the prevalence and impact of length bias in QE metrics have been underexplored. Through a systematic study of top-performing learned and LLM-as-a-Judge QE metrics across 10 diverse language pairs, we reveal two critical length biases: First, QE metrics consistently over-predict errors with increasing translation length, even for high-quality, error-free texts. Second, they exhibit a systematic preference for shorter translations when multiple candidates of comparable quality are available for the same source text. These biases risk unfairly penalizing longer, correct translations and can propagate into downstream pipelines that rely on QE signals for data selection or system optimization. We trace the root cause of learned QE metrics to skewed supervision distributions, where longer error-free examples are underrepresented in training data. As a diagnostic intervention, we apply length normalization during training and show that this simple modification effectively decouples error prediction from sequence length, yielding more reliable QE signals across translations of varying length.
title Penalizing Length: Uncovering Systematic Bias in Quality Estimation Metrics
topic Computation and Language
url https://arxiv.org/abs/2510.22028