Mitigating Label Shift in Tabular In-Context Learning via Test-Time Posterior Adjustment
arXiv:2605.04363v1 Announce Type: new
Abstract: TabPFN has recently gained attention as a foundation model for tabular datasets, achieving strong performance by leveraging in-context learning on synthetic data. However, we find that TabPFN is vulnerab…