Constrained Diffusion with Trust Sampling
–Neural Information Processing Systems
Diffusion models have demonstrated significant promise in various generative tasks; however, they often struggle to satisfy challenging constraints. We formulate a series of constrained optimizations throughout the inference process of a diffusion model. In each optimization, we allow the sample to take multiple steps along the gradient of the proxy constraint function until we can no longer trust the proxy, according to the variance at each diffusion level. Additionally, we estimate the state manifold of diffusion model to allow for early termination when the sample starts to wander away from the state manifold at each diffusion step. Trust sampling effectively balances between following the unconditional diffusion model and adhering to the loss guidance, enabling more flexible and accurate constrained generation.
Neural Information Processing Systems
May-27-2025, 12:11:27 GMT
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