AICYDec 11, 2025

Challenges of Evaluating LLM Safety for User Welfare

arXiv:2512.10687v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This addresses the problem of underdeveloped safety evaluations for LLMs in high-stakes personal advice contexts like finance and health, particularly for vulnerable populations, though it is exploratory and incremental in methodology.

The paper tackles the challenge of evaluating large language model safety for individual user welfare, demonstrating that context-blind evaluators rate identical LLM responses as significantly safer than context-aware evaluators, with safety scores for high-vulnerability users dropping from 5/7 to 3/7. It finds that realistic user context disclosure in prompts does not improve safety ratings, establishing that effective evaluation requires assessing responses against diverse user profiles.

Safety evaluations of large language models (LLMs) typically focus on universal risks like dangerous capabilities or undesirable propensities. However, millions use LLMs for personal advice on high-stakes topics like finance and health, where harms are context-dependent rather than universal. While frameworks like the OECD's AI classification recognize the need to assess individual risks, user-welfare safety evaluations remain underdeveloped. We argue that developing such evaluations is non-trivial due to fundamental questions about accounting for user context in evaluation design. In this exploratory study, we evaluated advice on finance and health from GPT-5, Claude Sonnet 4, and Gemini 2.5 Pro across user profiles of varying vulnerability. First, we demonstrate that evaluators must have access to rich user context: identical LLM responses were rated significantly safer by context-blind evaluators than by those aware of user circumstances, with safety scores for high-vulnerability users dropping from safe (5/7) to somewhat unsafe (3/7). One might assume this gap could be addressed by creating realistic user prompts containing key contextual information. However, our second study challenges this: we rerun the evaluation on prompts containing context users report they would disclose, finding no significant improvement. Our work establishes that effective user-welfare safety evaluation requires evaluators to assess responses against diverse user profiles, as realistic user context disclosure alone proves insufficient, particularly for vulnerable populations. By demonstrating a methodology for context-aware evaluation, this study provides both a starting point for such assessments and foundational evidence that evaluating individual welfare demands approaches distinct from existing universal-risk frameworks. We publish our code and dataset to aid future developments.

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