Develops error-propagation bounds and stability estimates for probability-flow ODE distillation, yielding a stability-balanced non-uniform time discretization that improves few-step sampling accuracy.
Simultaneous approximation of the score func- tion and its derivatives by deep neural networks.arXiv preprint arXiv:2512.23643, 2025
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A Quantitative Approximation Framework for Flow Distillation in Diffusion Models
Develops error-propagation bounds and stability estimates for probability-flow ODE distillation, yielding a stability-balanced non-uniform time discretization that improves few-step sampling accuracy.