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LLM Evaluators are Biased across Languages

Researchers found that LLM evaluators, including trained reward models and prompted judges, assign significantly different scores to semantically identical content across 23 languages, with lower-resource languages receiving more generous scores. This bias persists in frontier models and is invisible to standard pairwise accuracy metrics, meaning harmful content in lower-resource languages is more likely to pass safety filters. The study attributes the bias to structural, language-level misalignment rather than content difficulty alone.

read2 min views1 publishedJul 17, 2026
LLM Evaluators are Biased across Languages
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[Submitted on 16 Jul 2026]


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Abstract:LLM evaluators (trained reward models and prompted LLM-as-a-Judge) are routinely validated via pairwise accuracy. In a multilingual setting, this operates under the premise that high pairwise accuracy implies reliable, language-neutral scoring. We show that this assumption does not hold. We conduct experiments with semantically identical instruction-response pairs across 23 languages, and find that multilingual evaluators assign significantly different scores to different evaluation languages. The bias is statistically significant and consistent across eight open-weight evaluators of different architectures and training paradigms, persists in frontier judges, and is strongly correlated with language resource level: lower-resource languages are scored more generously. Meanwhile, these biases are invisible to pairwise accuracy: evaluators achieve above 90% pairwise accuracy, yet have up to 43% difference in acceptance rate across languages under a global decision threshold, meaning, for instance, that harmful content in lower-resource languages is more likely to pass safety filters. Per-language thresholds would require language identification, which can be defeated by code-switched prompts. We then investigate why lower-resource languages receive higher rather than lower scores, and we find that model uncertainty is linked with the effect: models tend to give higher scores when less confident, both under negative log-likelihood and under token-free uncertainty measures; however, language identity remains a significant predictor after controlling for uncertainty, and the bias cannot be explained away by content difficulty alone, but is a structural, language-level misalignment.

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