AI RESEARCH
Permutation-Invariant Spectral Learning via Dyson Diffusion
arXiv CS.LG
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ArXi:2510.08535v2 Announce Type: replace-cross Diffusion models are central to generative modeling and have been adapted to graphs by diffusing adjacency matrix representations. The challenge of having up to $n!$ such representations for graphs with $n$ nodes is only partially mitigated by using permutation-equivariant learning architectures. Despite their computational efficiency, existing graph diffusion models struggle to distinguish certain graph families and their spectra, unless graph data are augmented with ad hoc features.