Generative Model Study for 1+1d-Complex Scalar Field Theory

Zhou K, Endrödi G, Pang L-G, Stöcker H (2021)
In: Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019)., 372. Trieste, Italy: Sissa Medialab: 007.

Konferenzbeitrag | Veröffentlicht | Englisch
 
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Autor*in
Zhou, Kai; Endrödi, GergelyUniBi ; Pang, Long-Gang; Stöcker, Horst
Abstract / Bemerkung
We reported a recent work that applies modern Deep Learning (convolutional neural network) techniques in the context of two dimensional lattice complex scalar field theory, which has a non-trivial phase diagram at nonzero temperature and chemical potential. Especially we introuced the field configuration production with generative adversarial network (GAN), where the GAN is showed to be able to automatically capture the implicit local constraint for the physical configurations and also the underlying physical distribution. We further explored generalize the configuration production at different parameter space using conditional GAN.
Erscheinungsjahr
2021
Titel des Konferenzbandes
Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019)
Band
372
Seite(n)
007
Konferenz
Artificial Intelligence for Science, Industry and Society (AISIS 2019)
Konferenzort
Mexico City, México
Konferenzdatum
2019-10-21 – 2019-10-25
Page URI
https://pub.uni-bielefeld.de/record/2980055

Zitieren

Zhou K, Endrödi G, Pang L-G, Stöcker H. Generative Model Study for 1+1d-Complex Scalar Field Theory. In: Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019). Vol 372. Trieste, Italy: Sissa Medialab; 2021: 007.
Zhou, K., Endrödi, G., Pang, L. - G., & Stöcker, H. (2021). Generative Model Study for 1+1d-Complex Scalar Field Theory. Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019), 372, 007. Trieste, Italy: Sissa Medialab. https://doi.org/10.22323/1.372.0007
Zhou, Kai, Endrödi, Gergely, Pang, Long-Gang, and Stöcker, Horst. 2021. “Generative Model Study for 1+1d-Complex Scalar Field Theory”. In Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019), 372:007. Trieste, Italy: Sissa Medialab.
Zhou, K., Endrödi, G., Pang, L. - G., and Stöcker, H. (2021). “Generative Model Study for 1+1d-Complex Scalar Field Theory” in Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019), vol. 372, (Trieste, Italy: Sissa Medialab), 007.
Zhou, K., et al., 2021. Generative Model Study for 1+1d-Complex Scalar Field Theory. In Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019). no.372 Trieste, Italy: Sissa Medialab, pp. 007.
K. Zhou, et al., “Generative Model Study for 1+1d-Complex Scalar Field Theory”, Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019), vol. 372, Trieste, Italy: Sissa Medialab, 2021, pp.007.
Zhou, K., Endrödi, G., Pang, L.-G., Stöcker, H.: Generative Model Study for 1+1d-Complex Scalar Field Theory. Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019). 372, p. 007. Sissa Medialab, Trieste, Italy (2021).
Zhou, Kai, Endrödi, Gergely, Pang, Long-Gang, and Stöcker, Horst. “Generative Model Study for 1+1d-Complex Scalar Field Theory”. Proceedings of Artificial Intelligence for Science, Industry and Society — PoS(AISIS2019). Trieste, Italy: Sissa Medialab, 2021.Vol. 372. 007.

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