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Diffusion Models for Constrained Domains

About

Denoising diffusion models are a novel class of generative algorithms that achieve state-of-the-art performance across a range of domains, including image generation and text-to-image tasks. Building on this success, diffusion models have recently been extended to the Riemannian manifold setting, broadening their applicability to a range of problems from the natural and engineering sciences. However, these Riemannian diffusion models are built on the assumption that their forward and backward processes are well-defined for all times, preventing them from being applied to an important set of tasks that consider manifolds defined via a set of inequality constraints. In this work, we introduce a principled framework to bridge this gap. We present two distinct noising processes based on (i) the logarithmic barrier metric and (ii) the reflected Brownian motion induced by the constraints. As existing diffusion model techniques cannot be applied in this setting, we derive new tools to define such models in our framework. We then demonstrate the practical utility of our methods on a number of synthetic and real-world tasks, including applications from robotics and protein design.

Nic Fishman, Leo Klarner, Valentin De Bortoli, Emile Mathieu, Michael Hutchinson• 2023

Related benchmarks

TaskDatasetResultRank
Constrained GenerationSimplices (test)
W1 Distance6
15
Constrained Generative ModelingHypercube [0, 1]^d d=2 (test)
Sliced Wasserstein Distance0.1905
4
Constrained Generative ModelingHypercube [0, 1]^d d=3 (test)
Sliced Wasserstein0.1716
4
Constrained Generative ModelingHypercube [0, 1]^d d=6 (test)
SWD11.9
4
Constrained Generative ModelingHypercube [0, 1]^d d=8 (test)
Sliced Wasserstein Distance0.0749
4
Constrained Generative ModelingHypercube [0, 1]^d d=20 (test)
SWD0.0432
4
Generative ModelingSynthetic bimodal distribution on Unit Simplex (Ad) d=2 (test)
MMD (mean)0.05
4
Generative ModelingSynthetic bimodal distribution on Unit Simplex (Ad) d=3 (test)
MMD (mean)0.238
4
Generative ModelingSynthetic bimodal distribution on Unit Simplex (Ad) d=10 (test)
MMD (Mean)0.275
4
Generative ModelingSynthetic bimodal distribution on Hypercube ([0, 1]d), d=2 (test)
MMD (mean)0.66
4
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