Mathematical analysis of singularities in the diffusion model under the submanifold assumption

TMLR Paper1105 Authors

29 Apr 2023 (modified: 02 Nov 2023)Rejected by TMLREveryoneRevisionsBibTeX
Abstract: This paper provides several mathematical analyses of the diffusion model in machine learning. The drift term of the backward sampling process is represented as a conditional expectation involving the data distribution and the forward diffusion. The training process aims to find such a drift function by minimizing the mean-squared residue related to the conditional expectation. Using small-time approximations of the Green's function of the forward diffusion, we show that the analytical mean drift function in DDPM and the score function in SGM asymptotically blow up in the final stages of the sampling process for singular data distributions such as those concentrated on lower dimensional manifolds, and is therefore difficult to approximate by a network. To overcome this difficulty, we derive a new target function and associated loss, which remains bounded even for singular data distributions. We validate the theoretical findings with several numerical examples.
Submission Length: Long submission (more than 12 pages of main content)
Assigned Action Editor: ~Alain_Durmus1
Submission Number: 1105
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