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arxiv: 2304.05907 · v1 · pith:PVC3KZSSnew · submitted 2023-04-12 · 💻 cs.LG · cs.AI· cs.NA· math.NA

Diffusion models with location-scale noise

classification 💻 cs.LG cs.AIcs.NAmath.NA
keywords noisediffusiongaussianmodelsnon-gaussiandatadistributionframework
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Diffusion Models (DMs) are powerful generative models that add Gaussian noise to the data and learn to remove it. We wanted to determine which noise distribution (Gaussian or non-Gaussian) led to better generated data in DMs. Since DMs do not work by design with non-Gaussian noise, we built a framework that allows reversing a diffusion process with non-Gaussian location-scale noise. We use that framework to show that the Gaussian distribution performs the best over a wide range of other distributions (Laplace, Uniform, t, Generalized-Gaussian).

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