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arxiv:2505.16134

Position of Uncertainty: A Cross-Linguistic Study of Positional Bias in Large Language Models

Published on May 22
· Submitted by dalime on May 26
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Abstract

LLMs display positional bias across different languages, which affects model uncertainty, syntax, and prompting, revealing that explicit positional guidance can reduce accuracy.

AI-generated summary

Large language models exhibit positional bias -- systematic neglect of information at specific context positions -- yet its interplay with linguistic diversity remains poorly understood. We present a cross-linguistic study across five typologically distinct languages (English, Russian, German, Hindi, Vietnamese), examining how positional bias interacts with model uncertainty, syntax, and prompting. Key findings: (1) Positional bias is model-driven, with language-specific variations -- Qwen2.5-7B favors late positions, challenging assumptions of early-token bias; (2) Explicit positional guidance (e.g., correct context is at position X) reduces accuracy across languages, undermining prompt-engineering practices; (3) Aligning context with positional bias increases entropy, yet minimal entropy does not predict accuracy. (4) We further uncover that LLMs differently impose dominant word order in free-word-order languages like Hindi.

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