AI RESEARCH
Fine-Grained Uncertainty Quantification via Collisions
arXiv CS.LG
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ArXi:2411.12127v5 Announce Type: replace We propose a new and intuitive metric for aleatoric uncertainty quantification (UQ), the prevalence of class collisions defined as the same input being observed in different classes. We use the rate of class collisions to define the collision matrix, a novel and uniquely fine-grained measure of uncertainty. For a classification problem involving $K$ classes, the $K\times K$ collision matrix $S$ measures the inherent difficulty in distinguishing between each pair of classes.