AINeutralarXiv – CS AI · 7h ago6/10
🧠
The Role of Ambiguity in Error Prediction via Uncertainty Quantification
Researchers present a method to improve error prediction in Large Language Models by distinguishing between genuine model uncertainty and input ambiguity. Using uncertainty quantification metrics on question-answering tasks, they demonstrate that ambiguity information significantly enhances error prediction accuracy, yielding improvements exceeding 10 percentage points across multiple datasets and model families.