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Hauptverfasser: Yang, Gefan, Baker, Elizabeth Louise, Severinsen, Michael L., Hipsley, Christy Anna, Sommer, Stefan
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2405.18353
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author Yang, Gefan
Baker, Elizabeth Louise
Severinsen, Michael L.
Hipsley, Christy Anna
Sommer, Stefan
author_facet Yang, Gefan
Baker, Elizabeth Louise
Severinsen, Michael L.
Hipsley, Christy Anna
Sommer, Stefan
contents The diffusion bridge, which is a diffusion process conditioned on hitting a specific state within a finite period, has found broad applications in various scientific and engineering fields. However, simulating diffusion bridges for modeling natural data can be challenging due to both the intractability of the drift term and continuous representations of the data. Although several methods are available to simulate finite-dimensional diffusion bridges, infinite-dimensional cases remain under explored. This paper presents a method that merges score matching techniques with operator learning, enabling a direct approach to learn the infinite-dimensional bridge and achieving a discretization equivariant bridge simulation. We conduct a series of experiments, ranging from synthetic examples with closed-form solutions to the stochastic nonlinear evolution of real-world biological shape data. Our method demonstrates high efficacy, particularly due to its ability to adapt to any resolution without extra training.
format Preprint
id arxiv_https___arxiv_org_abs_2405_18353
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Infinite-dimensional Diffusion Bridge Simulation via Operator Learning
Yang, Gefan
Baker, Elizabeth Louise
Severinsen, Michael L.
Hipsley, Christy Anna
Sommer, Stefan
Machine Learning
The diffusion bridge, which is a diffusion process conditioned on hitting a specific state within a finite period, has found broad applications in various scientific and engineering fields. However, simulating diffusion bridges for modeling natural data can be challenging due to both the intractability of the drift term and continuous representations of the data. Although several methods are available to simulate finite-dimensional diffusion bridges, infinite-dimensional cases remain under explored. This paper presents a method that merges score matching techniques with operator learning, enabling a direct approach to learn the infinite-dimensional bridge and achieving a discretization equivariant bridge simulation. We conduct a series of experiments, ranging from synthetic examples with closed-form solutions to the stochastic nonlinear evolution of real-world biological shape data. Our method demonstrates high efficacy, particularly due to its ability to adapt to any resolution without extra training.
title Infinite-dimensional Diffusion Bridge Simulation via Operator Learning
topic Machine Learning
url https://arxiv.org/abs/2405.18353