Abstract
We apply generative adversarial network (GAN) technology to build an event generator that simulates particle production in electron-proton scattering that is free of theoretical assumptions about underlying particle dynamics. The difficulty of efficiently training a GAN event simulator lies in learning the complicated patterns of the distributions of the particles physical properties. We develop a GAN that selects a set of transformed features from particle momenta that can be generated easily by the generator, and uses these to produce a set of augmented features that improve the sensitivity of the discriminator. The new Feature-Augmented and Transformed GAN (FAT-GAN) is able to faithfully reproduce the distribution of final state electron momenta in inclusive electron scattering, without the need for input derived from domain-based theoretical assumptions. The developed technology can play a significant role in boosting the science of existing and future accelerator facilities, such as the Electron-Ion Collider.
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CITATION STYLE
Alanazi, Y., Sato, N., Liu, T., Melnitchouk, W., Ambrozewicz, P., Hauenstein, F., … Li, Y. (2021). Simulation of Electron-Proton Scattering Events by a Feature-Augmented and Transformed Generative Adversarial Network (FAT-GAN). In IJCAI International Joint Conference on Artificial Intelligence (pp. 2126–2132). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2021/293
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