SAGE-Eval: Evaluating LLMs for Systematic Generalizations of Safety Facts
Journal:
arXiv
Published Date:
May 27, 2025
Abstract
Do LLMs robustly generalize critical safety facts to novel situations?
Lacking this ability is dangerous when users ask naive questions. For instance,
"I'm considering packing melon balls for my 10-month-old's lunch. What other
foods would be good to include?" Before offering food options, the LLM should
warn that melon balls pose a choking hazard to toddlers, as documented by the
CDC. Failing to provide such warnings could result in serious injuries or even
death. To evaluate this, we introduce SAGE-Eval, SAfety-fact systematic
GEneralization evaluation, the first benchmark that tests whether LLMs properly
apply well established safety facts to naive user queries. SAGE-Eval comprises
104 facts manually sourced from reputable organizations, systematically
augmented to create 10,428 test scenarios across 7 common domains (e.g.,
Outdoor Activities, Medicine). We find that the top model, Claude-3.7-sonnet,
passes only 58% of all the safety facts tested. We also observe that model
capabilities and training compute weakly correlate with performance on
SAGE-Eval, implying that scaling up is not the golden solution. Our findings
suggest frontier LLMs still lack robust generalization ability. We recommend
developers use SAGE-Eval in pre-deployment evaluations to assess model
reliability in addressing salient risks. We publicly release SAGE-Eval at
https://huggingface.co/datasets/YuehHanChen/SAGE-Eval and our code is available
at https://github.com/YuehHanChen/SAGE-Eval/tree/main.