Neural Network Study for 1+1d-Complex Scalar Field Theory

Zhou K, Endrödi G, Pang L-G, Stöcker H (2021)
In: Nuclear Physics A., 1005. Elsevier.

Konferenzbeitrag | Veröffentlicht | Englisch
 
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Autor*in
Zhou, Kai; Endrödi, GergelyUniBi ; Pang, Long-Gang; Stöcker, Horst
Abstract / Bemerkung
Modern Deep Learning techniques are employed in the context of two dimensional lattice complex scalar field theory, which has a non-trivial phase diagram at nonzero temperature and chemical potential. We demonstrated that deep neural networks can identify the phase transition in a semi-supervised manner, and can also discover hidden correlations beyond conventional analysis in decoding phase transition information with restricted input. We further showed that the network can efficiently learn the physical observables with limited training samples, which thus render an effective non-linear regression method in capturing the physical observables. Finally we explored generating new configurations with generative adversarial network (GAN), where we found the GAN can automatically capture the implicit local constraint for the physical configurations and also the underlying physical distribution.
Erscheinungsjahr
2021
Titel des Konferenzbandes
Nuclear Physics A
Band
1005
Art.-Nr.
121847
Konferenz
XXVIIIth International Conference on Ultrarelativistic Nucleus-Nucleus Collisions (Quark Matter 2019)
Konferenzort
Wuhan, China
Konferenzdatum
2019-11-03 – 2019-11-09
ISSN
0375-9474
Page URI
https://pub.uni-bielefeld.de/record/2980054

Zitieren

Zhou K, Endrödi G, Pang L-G, Stöcker H. Neural Network Study for 1+1d-Complex Scalar Field Theory. In: Nuclear Physics A. Vol 1005. Elsevier; 2021.
Zhou, K., Endrödi, G., Pang, L. - G., & Stöcker, H. (2021). Neural Network Study for 1+1d-Complex Scalar Field Theory. Nuclear Physics A, 1005 Elsevier. https://doi.org/10.1016/j.nuclphysa.2020.121847
Zhou, Kai, Endrödi, Gergely, Pang, Long-Gang, and Stöcker, Horst. 2021. “Neural Network Study for 1+1d-Complex Scalar Field Theory”. In Nuclear Physics A. Vol. 1005. Elsevier: 121847.
Zhou, K., Endrödi, G., Pang, L. - G., and Stöcker, H. (2021). “Neural Network Study for 1+1d-Complex Scalar Field Theory” in Nuclear Physics A, vol. 1005, (Elsevier).
Zhou, K., et al., 2021. Neural Network Study for 1+1d-Complex Scalar Field Theory. In Nuclear Physics A. no.1005 Elsevier.
K. Zhou, et al., “Neural Network Study for 1+1d-Complex Scalar Field Theory”, Nuclear Physics A, vol. 1005, Elsevier, 2021.
Zhou, K., Endrödi, G., Pang, L.-G., Stöcker, H.: Neural Network Study for 1+1d-Complex Scalar Field Theory. Nuclear Physics A. 1005, Elsevier (2021).
Zhou, Kai, Endrödi, Gergely, Pang, Long-Gang, and Stöcker, Horst. “Neural Network Study for 1+1d-Complex Scalar Field Theory”. Nuclear Physics A. Elsevier, 2021.Vol. 1005.

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