AI RESEARCH
Diffusion and Flow Matching Models for Tabular Data: A Survey
arXiv CS.AI
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ArXi:2502.17119v2 Announce Type: replace-cross Deep generative models have made rapid progress in image, text, audio, and video generation, and are increasingly being applied to structured records. For tabular data, however, generative modeling remains difficult: a dataset may contain numerical and categorical attributes, missing values, sensitive fields, imbalanced categories, complex feature dependencies, and domain constraints. Earlier tabular data modeling methods based on GANs or VAEs have achieved useful results, but they can suffer from unstable.