Approximation and Generalization Abilities of Score-based Neural Network Generative Models for Sub-Gaussian Distributions

Neural Information Processing Systems 

This paper studies the approximation and generalization abilities of score-based neural network generative models (SGMs) in estimating an unknown distribution P0 from n i.i.d.

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