AI RESEARCH
The Role of Ambiguity in Error Prediction via Uncertainty Quantification
arXiv CS.AI
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ArXi:2606.02093v1 Announce Type: cross The task of Error Prediction, namely predicting whether a model output is correct, is commonly tackled with Uncertainty Quantification (UQ). However, while uncertainty metrics capture when models lack knowledge or capacity to make a prediction, they also reflect aleatoric uncertainty, which is inherent in the model input and context. This paper presents a method for improving error prediction for Large Language Models (LLMs), by disentangling input ambiguity from UQ signal.