AI RESEARCH
Tracking High-order Evolutions via Cascading Low-rank Fitting
arXiv CS.LG
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ArXi:2604.10980v1 Announce Type: new Diffusion models have become the de facto standard for modern visual generation, including well-established frameworks such as latent diffusion and flow matching. Recently, modeling high-order dynamics has emerged as a promising frontier in generative modeling. Rather than only learning the first-order velocity field that transports random noise to a target data distribution, these approaches simultaneously learn higher-order derivatives, such as acceleration and jerk, yielding a diverse family of higher-order diffusion variants.