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Are Hallucinations Bad Estimations?
Published 25 Sep 2025 in cs.LG, cs.AI, cs.CL, cs.CV, and stat.ML | (2509.21473v1)
Abstract: We formalize hallucinations in generative models as failures to link an estimate to any plausible cause. Under this interpretation, we show that even loss-minimizing optimal estimators still hallucinate. We confirm this with a general high probability lower bound on hallucinate rate for generic data distributions. This reframes hallucination as structural misalignment between loss minimization and human-acceptable outputs, and hence estimation errors induced by miscalibration. Experiments on coin aggregation, open-ended QA, and text-to-image support our theory.
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