MedHal: An Evaluation Dataset for Medical Hallucination Detection
Journal:
arXiv
Published Date:
Apr 11, 2025
Abstract
We present MedHal, a novel large-scale dataset specifically designed to
evaluate if models can detect hallucinations in medical texts. Current
hallucination detection methods face significant limitations when applied to
specialized domains like medicine, where they can have disastrous consequences.
Existing medical datasets are either too small, containing only a few hundred
samples, or focus on a single task like Question Answering or Natural Language
Inference. MedHal addresses these gaps by: (1) incorporating diverse medical
text sources and tasks; (2) providing a substantial volume of annotated samples
suitable for training medical hallucination detection models; and (3) including
explanations for factual inconsistencies to guide model learning. We
demonstrate MedHal's utility by training and evaluating a baseline medical
hallucination detection model, showing improvements over general-purpose
hallucination detection approaches. This resource enables more efficient
evaluation of medical text generation systems while reducing reliance on costly
expert review, potentially accelerating the development of medical AI research.