Verbalizing LLM's Higher-order Uncertainty via Imprecise Probabilities
arXiv cs.AI / 3/12/2026
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Key Points
- The paper proposes novel prompt-based uncertainty elicitation techniques grounded in imprecise probabilities to better capture LLM uncertainty beyond classical probabilistic frameworks.
- It distinguishes first-order uncertainty (uncertainty over possible responses to a prompt) from second-order uncertainty (uncertainty about the probability model itself).
- It introduces general-purpose prompting and post-processing procedures to elicit and quantify both orders of uncertainty.
- It demonstrates effectiveness across diverse settings, enabling more faithful uncertainty reporting and improved downstream decision-making.
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