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Diffusion Generative Models in Infinite Dimensions

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arxiv 2212.00886 v2 pith:BMUQR2BE submitted 2022-12-01 cs.LG stat.ML

Diffusion Generative Models in Infinite Dimensions

classification cs.LG stat.ML
keywords modelsdatadiffusionfunctiongenerativespaceallowsdirectly
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Diffusion generative models have recently been applied to domains where the available data can be seen as a discretization of an underlying function, such as audio signals or time series. However, these models operate directly on the discretized data, and there are no semantics in the modeling process that relate the observed data to the underlying functional forms. We generalize diffusion models to operate directly in function space by developing the foundational theory for such models in terms of Gaussian measures on Hilbert spaces. A significant benefit of our function space point of view is that it allows us to explicitly specify the space of functions we are working in, leading us to develop methods for diffusion generative modeling in Sobolev spaces. Our approach allows us to perform both unconditional and conditional generation of function-valued data. We demonstrate our methods on several synthetic and real-world benchmarks.

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Cited by 2 Pith papers

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