Convergence of score-based generative modeling for general data
distributions
International Conference on Algorithmic Learning Theory (ALT), 2022
- DiffM
Abstract
We give polynomial convergence guarantees for denoising diffusion models that do not rely on the data distribution satisfying functional inequalities or strong smoothness assumptions. Assuming a -accurate score estimate, we obtain Wasserstein distance guarantees for any distributions of bounded support or sufficiently decaying tails, as well as TV guarantees for distributions with further smoothness assumptions.
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