AI RESEARCH
Towards Reliable Truth-Aligned Uncertainty Estimation in Large Language Models
arXiv CS.AI
•
ArXi:2604.00445v1 Announce Type: new Uncertainty estimation (UE) aims to detect hallucinated outputs of large language models (LLMs) to improve their reliability. However, UE metrics often exhibit unstable performance across configurations, which significantly limits their applicability. In this work, we formalise this phenomenon as proxy failure, since most UE metrics originate from model behaviour, rather than being explicitly grounded in the factual correctness of LLM outputs. With this, we show that UE metrics become non-discriminative precisely in low-information regimes.