SUA measures the gap between how much an LLM's output changes under perturbations and how uncertain the model claims to be, with a training procedure to reduce that gap.
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Sensitivity Uncertainty Alignment in Large Language Models
SUA measures the gap between how much an LLM's output changes under perturbations and how uncertain the model claims to be, with a training procedure to reduce that gap.