Evaluating Proactive Risk Awareness of Large Language Models
AI 摘要
该论文提出了一个评估大语言模型前瞻性风险意识的框架,并使用Butterfly数据集进行了生态环境领域的实验。
主要贡献
- 提出了前瞻性风险意识评估框架
- 构建了Butterfly数据集用于生态环境领域评估
- 分析了不同因素对大语言模型风险意识的影响
方法论
构建包含1094个查询的Butterfly数据集,模拟日常解决方案,评估LLM在回应时是否能预测潜在生态影响并发出警告。
原文摘要
As large language models (LLMs) are increasingly embedded in everyday decision-making, their safety responsibilities extend beyond reacting to explicit harmful intent toward anticipating unintended but consequential risks. In this work, we introduce a proactive risk awareness evaluation framework that measures whether LLMs can anticipate potential harms and provide warnings before damage occurs. We construct the Butterfly dataset to instantiate this framework in the environmental and ecological domain. It contains 1,094 queries that simulate ordinary solution-seeking activities whose responses may induce latent ecological impact. Through experiments across five widely used LLMs, we analyze the effects of response length, languages, and modality. Experimental results reveal consistent, significant declines in proactive awareness under length-restricted responses, cross-lingual similarities, and persistent blind spots in (multimodal) species protection. These findings highlight a critical gap between current safety alignment and the requirements of real-world ecological responsibility, underscoring the need for proactive safeguards in LLM deployment.