CLSep 9, 2025

No for Some, Yes for Others: Persona Prompts and Other Sources of False Refusal in Language Models

arXiv:2509.08075v14 citationsh-index: 18Proceedings of the 9th Widening NLP Workshop
AI Analysis

This addresses potential biases in personalized AI systems, though it is incremental as it builds on prior work on persona prompting.

The study quantified the impact of sociodemographic personas on false refusal in language models, finding that more capable models are less affected by personas, but model choice and task significantly influence refusal rates, suggesting underlying biases.

Large language models (LLMs) are increasingly integrated into our daily lives and personalized. However, LLM personalization might also increase unintended side effects. Recent work suggests that persona prompting can lead models to falsely refuse user requests. However, no work has fully quantified the extent of this issue. To address this gap, we measure the impact of 15 sociodemographic personas (based on gender, race, religion, and disability) on false refusal. To control for other factors, we also test 16 different models, 3 tasks (Natural Language Inference, politeness, and offensiveness classification), and nine prompt paraphrases. We propose a Monte Carlo-based method to quantify this issue in a sample-efficient manner. Our results show that as models become more capable, personas impact the refusal rate less and less. Certain sociodemographic personas increase false refusal in some models, which suggests underlying biases in the alignment strategies or safety mechanisms. However, we find that the model choice and task significantly influence false refusals, especially in sensitive content tasks. Our findings suggest that persona effects have been overestimated, and might be due to other factors.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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