AI RESEARCH

Joint Relational Database Generation via Graph-Conditional Diffusion Models

arXiv CS.LG

ArXi:2505.16527v2 Announce Type: replace Building generative models for relational databases (RDBs) is important for many applications, such as privacy-preserving data release and augmenting real datasets. However, most prior works either focus on single-table generation or adapt single-table models to the multi-table setting by relying on autoregressive factorizations and sequential generation. These approaches limit parallelism, restrict flexibility in downstream applications, and compound errors due to commonly made conditional independence assumptions.