Feb. 13, 2024, 5:45 a.m. | Joe Benton George Deligiannidis Arnaud Doucet

cs.LG updates on arXiv.org arxiv.org

Score-based generative models are a popular class of generative modelling techniques relying on stochastic differential equations (SDE). From their inception, it was realized that it was also possible to perform generation using ordinary differential equations (ODE) rather than SDE. This led to the introduction of the probability flow ODE approach and denoising diffusion implicit models. Flow matching methods have recently further extended these ODE-based approaches and approximate a flow between two arbitrary probability distributions. Previous work derived bounds on the …

class cs.lg denoising differential diffusion error flow generative generative models introduction modelling ordinary popular probability stat.ml stochastic

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