Low-dimensional adaptation of diffusion models: Convergence in total variation
Journal:
arXiv
Published Date:
Jan 22, 2025
Abstract
This paper investigates how diffusion generative models leverage (unknown)
low-dimensional structure to accelerate sampling. Focusing on two mainstream
samplers -- the denoising diffusion implicit model (DDIM) and the denoising
diffusion probabilistic model (DDPM) -- and assuming accurate score estimates,
we prove that their iteration complexities are no greater than the order of
$k/\varepsilon$ (up to some log factor), where $\varepsilon$ is the precision
in total variation distance and $k$ is some intrinsic dimension of the target
distribution. Our results are applicable to a broad family of target
distributions without requiring smoothness or log-concavity assumptions.
Further, we develop a lower bound that suggests the (near) necessity of the
coefficients introduced by Ho et al.(2020) and Song et al.(2020) in
facilitating low-dimensional adaptation. Our findings provide the first
rigorous evidence for the adaptivity of the DDIM-type samplers to unknown
low-dimensional structure, and improve over the state-of-the-art DDPM theory
regarding total variation convergence.