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Nearly dd-Linear Convergence Bounds for Diffusion Models via Stochastic Localization

Abstract

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 L2L^2-accurate scores. Until now, the tightest bounds were either superlinear in the data dimension or required strong smoothness assumptions. We provide the first convergence bounds which are linear in the data dimension (up to logarithmic factors) assuming only finite second moments of the data distribution. We show that diffusion models require at most O~(dlog2(1/δ)ε2)\tilde O(\frac{d \log^2(1/\delta)}{\varepsilon^2}) steps to approximate an arbitrary distribution on Rd\mathbb{R}^d corrupted with Gaussian noise of variance δ\delta to within ε2\varepsilon^2 in KL divergence. Our proof extends the Girsanov-based methods of previous works. We introduce a refined treatment of the error from discretizing the reverse SDE inspired by stochastic localization.

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