Generative Adversarial Neural Operators
Abstract
We propose the generative adversarial neural operator (GANO), a generative model paradigm for learning probabilities on infinite-dimensional function spaces. The natural sciences and engineering are known to have many types of data that are sampled from infinite-dimensional function spaces, where classical finite-dimensional deep generative adversarial networks (GANs) may not be directly applicable. GANO generalizes the GAN framework and allows for the sampling of functions by learning push-forward operator maps in infinite-dimensional spaces. GANO consists of two main components, a generator neural operator and a discriminator neural functional. The inputs to the generator are samples of functions from a user-specified probability measure, e.g., Gaussian random field (GRF), and the generator outputs are synthetic data functions. The input to the discriminator is either a real or synthetic data function. In this work, we instantiate GANO using the Wasserstein criterion and show how the Wasserstein loss can be computed in infinite-dimensional spaces. We empirically study GANOs in controlled cases where both input and output functions are samples from GRFs and compare its performance to the finite-dimensional counterpart GAN. We empirically study the efficacy of GANO on real-world function data of volcanic activities and show its superior performance over GAN. Furthermore, we find that for the function-based data considered, GANOs are more stable to train than GANs and require less hyperparameter optimization.
Additional Information
The authors thank Yuan-Kai Liu for his assistance in preparing the InSAR dataset. The authors would like to thank Zongyi Li and Hongkai Zheng for their valuable inputs. Anima Anandkumar and Zachary E. Ross are supported in part by Carver Mead New Adventures Fund.Attached Files
Submitted - 2205.03017.pdf
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Additional details
- Eprint ID
- 115584
- Resolver ID
- CaltechAUTHORS:20220714-212515070
- Carver Mead New Adventures Fund
- Created
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2022-07-15Created from EPrint's datestamp field
- Updated
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2023-06-02Created from EPrint's last_modified field
- Caltech groups
- Seismological Laboratory, Division of Geological and Planetary Sciences