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3 months ago

Generative Modeling with Bayesian Sample Inference

Marten Lienen Marcel Kollovieh Stephan Günnemann

Generative Modeling with Bayesian Sample Inference

Abstract

We derive a novel generative model from iterative Gaussian posterior inference. By treating the generated sample as an unknown variable, we can formulate the sampling process in the language of Bayesian probability. Our model uses a sequence of prediction and posterior update steps to iteratively narrow down the unknown sample starting from a broad initial belief. In addition to a rigorous theoretical analysis, we establish a connection between our model and diffusion models and show that it includes Bayesian Flow Networks (BFNs) as a special case. In our experiments, we demonstrate that our model improves sample quality on ImageNet32 over both BFNs and the closely related Variational Diffusion Models, while achieving equivalent log-likelihoods on ImageNet32 and CIFAR10. Find our code at https://github.com/martenlienen/bsi.

Code Repositories

martenlienen/bsi
Official
jax
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
density-estimation-on-cifar-10BSI
NLL (bits/dim): 2.64
image-generation-on-imagenet-32x32BSI
bpd: 3.44
image-generation-on-imagenet-64x64BSI
Bits per dim: 3.22

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Generative Modeling with Bayesian Sample Inference | Papers | HyperAI