Outsourced diffusion sampling: Efficient posterior inference in latent spaces of generative models
Siddarth Venkatraman, Mohsin Hasan, Minsu Kim, Luca Scimeca, Marcin Sendera, Yoshua Bengio, Glen Berseth, Nikolay Malkin

TL;DR
This paper introduces a novel diffusion-based sampling method in noise space for efficient posterior inference in generative models, enabling conditional sampling in complex models like GANs and VAEs.
Contribution
It proposes a reinforcement learning-trained diffusion sampler in noise space to approximate intractable posteriors, improving inference in various generative models.
Findings
Effective in conditional image generation
Outperforms existing inference methods
Applicable to large pretrained models
Abstract
Any well-behaved generative model over a variable can be expressed as a deterministic transformation of an exogenous ('outsourced') Gaussian noise variable : . In such a model (\eg, a VAE, GAN, or continuous-time flow-based model), sampling of the target variable is straightforward, but sampling from a posterior distribution of the form , where is a constraint function depending on an auxiliary variable , is generally intractable. We propose to amortize the cost of sampling from such posterior distributions with diffusion models that sample a distribution in the noise space (). These diffusion samplers are trained by reinforcement learning algorithms to enforce that the transformed…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications
MethodsDiffusion
