AI RESEARCH

The Role of Feature Interactions in Graph-based Tabular Deep Learning

arXiv CS.LG

ArXi:2510.04543v2 Announce Type: replace Accurate predictions on tabular data rely on capturing complex, dataset-specific feature interactions. Attention-based methods and graph neural networks, referred to as graph-based tabular deep learning (GTDL), aim to improve predictions by modeling these interactions as a graph. In this work, we analyze how these methods model the feature interactions. Current GTDL approaches primarily focus on optimizing predictive accuracy, often neglecting the accurate modeling of the underlying graph structure.