AI RESEARCH

On the Epistemic Uncertainty of Overparametrized Neural Networks

arXiv CS.AI

ArXi:2605.25234v1 Announce Type: cross Epistemic uncertainty is often viewed as a reducible uncertainty that vanishes with increasing data. This perspective implicitly assumes parameter identifiability and equates epistemic uncertainty with predictive variability. In overparametrized neural networks, however, model parameters are typically non-identifiable due to symmetries and redundant representations. As a consequence, substantial parameter uncertainty can persist even when the underlying function is fully identified.