Wasserstein Bounds for generative diffusion models with Gaussian tail targets
- URL: http://arxiv.org/abs/2412.11251v1
- Date: Sun, 15 Dec 2024 17:20:42 GMT
- Title: Wasserstein Bounds for generative diffusion models with Gaussian tail targets
- Authors: Xixian Wang, Zhongjian Wang,
- Abstract summary: We present an estimate of the Wasserstein distance between the data distribution and the generation of score-based generative models.
The complexity bound in dimension is $O(sqrtd)$, with a logarithmic constant.
- Score: 0.0
- License:
- Abstract: We present an estimate of the Wasserstein distance between the data distribution and the generation of score-based generative models, assuming an $\epsilon$-accurate approximation of the score and a Gaussian-type tail behavior of the data distribution. The complexity bound in dimension is $O(\sqrt{d})$, with a logarithmic constant. Such Gaussian tail assumption applies to the distribution of a compact support target with early stopping technique and the Bayesian posterior with a bounded observation operator. Corresponding convergence and complexity bounds are derived. The crux of the analysis lies in the Lipchitz bound of the score, which is related to the Hessian estimate of a viscous Hamilton-Jacobi equation (vHJ). This latter is demonstrated by employing a dimension independent kernel estimate. Consequently, our complexity bound scales linearly (up to a logarithmic constant) with the square root of the trace of the covariance operator, which relates to the invariant distribution of forward process. Our analysis also extends to the probabilistic flow ODE, as the sampling process.
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