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Geometric Neural Diffusion Processes

About

Denoising diffusion models have proven to be a flexible and effective paradigm for generative modelling. Their recent extension to infinite dimensional Euclidean spaces has allowed for the modelling of stochastic processes. However, many problems in the natural sciences incorporate symmetries and involve data living in non-Euclidean spaces. In this work, we extend the framework of diffusion models to incorporate a series of geometric priors in infinite-dimension modelling. We do so by a) constructing a noising process which admits, as limiting distribution, a geometric Gaussian process that transforms under the symmetry group of interest, and b) approximating the score with a neural network that is equivariant w.r.t. this group. We show that with these conditions, the generative functional model admits the same symmetry. We demonstrate scalability and capacity of the model, using a novel Langevin-based conditional sampler, to fit complex scalar and vector fields, with Euclidean and spherical codomain, on synthetic and real-world weather data.

Emile Mathieu, Vincent Dutordoir, Michael J. Hutchinson, Valentin De Bortoli, Yee Whye Teh, Richard E. Turner• 2023

Related benchmarks

TaskDatasetResultRank
RegressionSynthetic GP Squared Exponential, D=1 (test)
Mean Test Log-Likelihood4.22
7
RegressionSynthetic GP Squared Exponential, D=2 (test)
Mean Test Log-Likelihood-13.36
7
RegressionSynthetic GP Squared Exponential, D=3 (test)
Mean Test Log-Likelihood-20.45
7
RegressionSynthetic GP (Matérn-5/2, D=2) (test)
Mean Test Log-Likelihood-14.73
7
RegressionSynthetic GP Matérn-5/2, D=3 (test)
Mean Test Log-Likelihood-20.63
7
ForecastingEEG
NLL2.84
7
InterpolationEEG
NLL2.48
7
ReconstructionEEG
NLL2.65
7
RegressionSynthetic GP Matérn-5/2, D=1 (test)
Mean Test Log-Likelihood-0.13
7
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