uLEAD-TabPFN: Uncertainty-aware Dependency-based Anomaly Detection with TabPFN
arXiv:2604.20255v1 Announce Type: new Abstract: Anomaly detection in tabular data is challenging due to high dimensionality, complex feature dependencies, and heterogeneous noise. Many existing methods rely on proximity-based cues and may miss anomalies caused by violations of complex feature depend