AI RESEARCH
Supervised Guidance Training for Infinite-Dimensional Diffusion Models
arXiv CS.LG
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ArXi:2601.20756v2 Announce Type: replace Score-based diffusion models have recently been extended to infinite-dimensional function spaces, with uses such as inverse problems arising from partial differential equations. In the Bayesian formulation of inverse problems, the aim is to sample from a posterior distribution over functions obtained by conditioning a prior on noisy observations. While diffusion models provide expressive priors in function space, the theory of conditioning them to sample from the posterior remains open.