AI RESEARCH

Active Tabular Augmentation via Policy-Guided Diffusion Inpainting

arXiv CS.AI

ArXi:2605.10315v1 Announce Type: cross Generative tabular augmentation is appealing in data-scarce domains, yet the prevailing focus on distributional fidelity does not reliably translate into better downstream models. We formalize a fidelity-utility gap: common generative objectives prioritize distributional plausibility, whereas augmentation succeeds only when injected samples reduce the current learner's held-out evaluation loss. This gap motivates learning not just how to generate, but what to generate and when to inject as.