Section 01
Introduction to the ExposureQA Framework: A New Tool for Revealing LLM Fact Recall and Hallucination Mechanisms
ExposureQA is a benchmark and analysis framework for studying fact recall, confidence, and calibration capabilities of large language models (LLMs). By extracting relation-aware semantic support from pre-trained corpora, it deeply understands the source of model knowledge and the causes of hallucinations, helping shift from 'black-box testing' to 'white-box analysis' and providing key tools for LLM optimization, evaluation, and hallucination research.