Nearly d-linear convergence bounds for diffusion models via stochastic localization
Denoising diffusions are a powerful method to generate approximate samples from high-dimensional data distributions. Recent results provide polynomial bounds on their convergence rate, assuming L 2 -accurate scores. Until now, the tightest bounds were either superlinear in the data dimension or requ...
Main Authors: | Benton, J, Bortoli, VD, Doucet, A, Deligiannidis, G |
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Format: | Conference item |
Language: | English |
Published: |
OpenReview
2024
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