AI RESEARCH

Revisiting Metafeatures to Explain Model Differences on Tabular Data

arXiv CS.LG

ArXi:2605.28418v1 Announce Type: new With the rise of tabular foundation models alongside traditional models still performing well on many tasks, choosing the right model for a tabular dataset remains difficult. We investigate whether dataset meta-features can explain performance gaps between model families on tabular prediction tasks. Using the TabArena benchmark results, we analyze dataset-level performance gaps and relate them to model-agnostic dataset descriptors. After strict statistical tests with false discovery control, we find that (1) for neural network vs.