Medical Hallucination in Foundation Models and Their Impact on Healthcare
Massachusetts Institute of Technology · Harvard University · +12 more institutions
Abstract
Hallucinations in foundation models arise from autoregressive training objectives that prioritize token-likelihood optimization over epistemic accuracy, fostering overconfidence and poorly calibrated uncertainty. We define medical hallucination as any model-generated output that is factually incorrect, logically inconsistent, or unsupported by authoritative clinical evidence in ways that could alter clinical decisions. We evaluated 11 foundation models (7 general-purpose, 4 medical-specialized) across seven medical hallucination tasks spanning medical reasoning and biomedical information retrieval. General-purpose models achieved significantly higher proportions of hallucination-free responses than…
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27Topics & keywords
- Foundation (evidence)
- Health care
- Psychology
- Medicine
- History
- Political science