Diffusion Model With Optimal Covariance Matching
CoRR(2024)
Abstract
The probabilistic diffusion model has become highly effective across various
domains. Typically, sampling from a diffusion model involves using a denoising
distribution characterized by a Gaussian with a learned mean and either fixed
or learned covariances. In this paper, we leverage the recently proposed full
covariance moment matching technique and introduce a novel method for learning
covariances. Unlike traditional data-driven covariance approximation
approaches, our method involves directly regressing the optimal analytic
covariance using a new, unbiased objective named Optimal Covariance Matching
(OCM). This approach can significantly reduce the approximation error in
covariance prediction. We demonstrate how our method can substantially enhance
the sampling efficiency of both Markovian (DDPM) and non-Markovian (DDIM)
diffusion model families.
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