AI RESEARCH

Bridging Input Feature Spaces Towards Graph Foundation Models

arXiv CS.LG

ArXi:2605.04834v1 Announce Type: new Unlike vision and language domains, graph learning lacks a shared input space, as input features differ across graph datasets not only in semantics, but also in value ranges and dimensionality. This misalignment prevents graph models from generalizing across datasets, limiting their use as foundation models. In this work, we propose ALL-IN, a simple and theoretically grounded method that enables transferability across datasets with different input features.